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10th International Congress on Information and Communication Technology in concurrent with ICT Excellence Awards (ICICT 2025) will be held at London, United Kingdom | February 18 - 21 2025.
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Tuesday, February 18
 

8:15am GMT

Registration with Networking Tea / Coffee & Cookies
Tuesday February 18, 2025 8:15am - 8:45am GMT
Tuesday February 18, 2025 8:15am - 8:45am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

8:45am GMT

Welcome Remarks By
Tuesday February 18, 2025 8:45am - 8:55am GMT
Speakers/Session Chair
avatar for Amit Joshi, Ph.D

Amit Joshi, Ph.D

Conference Chair ICICT & BIOCOM 2025 Director, Global Knowledge Research Foundation
Tuesday February 18, 2025 8:45am - 8:55am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

8:55am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 8:55am - 9:05am GMT
Speakers/Session Chair
avatar for R. Simon Sherratt, PhD

R. Simon Sherratt, PhD

Professor, University of Reading, United Kingdom
Tuesday February 18, 2025 8:55am - 9:05am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

9:05am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 9:05am - 9:15am GMT
Speakers/Session Chair
avatar for Xin-She Yang, PhD

Xin-She Yang, PhD

United Kingdom, Professor, Middlesex University London, United Kingdom
Tuesday February 18, 2025 9:05am - 9:15am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

9:15am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 9:15am - 9:25am GMT
Speakers/Session Chair
avatar for Nilanjan Dey, PhD

Nilanjan Dey, PhD

Professor, Techno International New Town, India
Tuesday February 18, 2025 9:15am - 9:25am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

9:25am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 9:25am - 9:35am GMT
Speakers/Session Chair
avatar for Mr. Aninda Bose

Mr. Aninda Bose

Executive Editor, Springer Nature Group, United Kingdom
Tuesday February 18, 2025 9:25am - 9:35am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

9:35am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 9:35am - 9:45am GMT
Speakers/Session Chair
avatar for Mukesh Kumar, Ph.D

Mukesh Kumar, Ph.D

Associate Professor, University of Cambridge, United Kingdom
Tuesday February 18, 2025 9:35am - 9:45am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

9:45am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 9:45am - 9:55am GMT
Speakers/Session Chair
avatar for Milan Tuba, Ph.D

Milan Tuba, Ph.D

Head - Artificial Intelligence Project, Singidunum University & Vice-Rector of Research at Sinergija University, Serbia
Tuesday February 18, 2025 9:45am - 9:55am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

9:55am GMT

Address By Special Guest & Keynote Speaker BIOCOM 2025
Tuesday February 18, 2025 9:55am - 10:05am GMT
Speakers/Session Chair
avatar for Harshada Joshi, Ph.D

Harshada Joshi, Ph.D

Associate Prof. & Course Director, Department of Biotechnology, Mohanlal Sukhadia University, India
Tuesday February 18, 2025 9:55am - 10:05am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

10:05am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 10:05am - 10:15am GMT
Speakers/Session Chair
avatar for Tatiana Kalganova, Ph.D

Tatiana Kalganova, Ph.D

Professor & Director - Artificial Intelligence, Brunel University London, United Kingdom
Tuesday February 18, 2025 10:05am - 10:15am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

10:15am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 10:15am - 10:25am GMT
Speakers/Session Chair
avatar for Pancham Shukla, Ph.D

Pancham Shukla, Ph.D

Associate Professor, Imperial College London, United Kingdom
Tuesday February 18, 2025 10:15am - 10:25am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

10:25am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 10:25am - 10:35am GMT
Speakers/Session Chair
avatar for Monomita Nandy, Ph.D

Monomita Nandy, Ph.D

Vice Dean International / Professor - Accounting and Finance, Brunel University London, United Kingdom
Tuesday February 18, 2025 10:25am - 10:35am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

10:35am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 10:35am - 10:45am GMT
Speakers/Session Chair
avatar for Bal Virdee, Ph.D

Bal Virdee, Ph.D

Senior Professor & Head, London Metropolitan University, United Kingdom
Tuesday February 18, 2025 10:35am - 10:45am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

10:45am GMT

Address By Special Guest and Speaker
Tuesday February 18, 2025 10:45am - 10:55am GMT
Speakers/Session Chair
avatar for Mufti Mahmud, Ph.D

Mufti Mahmud, Ph.D

Professor, King Fahd University of Petroleum and Minerals, Saudi Arabia
Tuesday February 18, 2025 10:45am - 10:55am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

10:55am GMT

Vote of Appreciation & Felicitation
Tuesday February 18, 2025 10:55am - 11:00am GMT
Tuesday February 18, 2025 10:55am - 11:00am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

11:00am GMT

Felicitations and Conference Group Photograph
Tuesday February 18, 2025 11:00am - 11:15am GMT
Tuesday February 18, 2025 11:00am - 11:15am GMT
Ludgate Suite America Square Conference Centre, London, United Kingdom

11:45am GMT

Applied Green Computational Intelligence based Solutions to Enhance Sustainability in Precision Farming
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Authors - Maryem MELHAOUI, Abderrahim BAJIT, Khalid BOUALI, Youness ZAHID, Hicham Essamri, Rachid EL BOUAYADI
Abstract - To assure sustainability and optimize production and resource management in the agricultural sector while reducing the impact on the environment, we are currently using precision agriculture, which is mainly based on advanced technologies, including IoT platforms. In this context, the efficiency and accuracy of these IoT platforms depends heavily on the performance of its electronic resources and the distribution of its nodes. In the literature, the architecture of IoT platforms often consists of static nodes designated for the collection and communication of data to the computing machine. This distribution can also be mobile using self-driving robots on which nodes are hosted. In this perspective, we have studied, designed and deployed an IoT platform with dynamic distribution of nodes that is the subject of discussion and analysis in this manuscript. The idea is based on the intelligent deployment of the node operating mode, namely: activated or deactivated. To achieve this idea, we used two types of intelligent learning: supervised learning and unsupervised learning that both use a battery of intelligent models capable of analyzing and predicting the voluntary or involuntary missing data within the IoT platform. To recover missing data, two types of predicting solutions are available either by taking advantage of the arrival of certain new PAYLOAD’s components, or by using features’ history. To accomplish this we deployed Random Forrest (RF) and LSTM models. The paper’s objective consists of an intelligent and sustainable green solution to optimize the resource management of a dynamic IoT platform dedicated to greenhouse supervision.
Paper Presenters
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Fleet Suite - 1D America Square Conference Centre, London, United Kingdom

11:45am GMT

Implementing Digital Transformation in Service Industry Areas: Technological Problems and Solutions
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Authors - Rositsa Doneva, Nevena Staevsky, Zhelyana Doneva, Silvia Gaftandzhieva
Abstract - When implementing advanced technologies, companies face many challenges that can be overcome with the right approaches and solutions. This study investigates common implementation problems and possible solutions in digital transformation project performance in service industries. The paper presents the results of the first stage of the study, which aims to clarify its theoretical and practical foundations, as well as to focus on the research topic and to define the problem statement that should be resolved further. Based on the analysis of the factors requiring the use of cloud solutions, known approaches and technological solutions for digital transformation, the scope of the research is refined by identifying the target parameters by three main components (researched areas of the service industry, types of technological solutions for digitalization and the corresponding stages of their implementation) on which the study will focus. The problem statement is defined according to those parameters – for the target stages in implementing the selected technological solutions for digital transformation in the identified service industry areas. The achievements of this first stage will allow solutions to be proposed and tested to overcome technological problems which companies and institutions during introducing contemporary digital technologies and cloud services in their operational and business activities.
Paper Presenters
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Bishopsgate Suite - 1A America Square Conference Centre, London, United Kingdom

11:45am GMT

Institutional Approach from a Relational Perspective: an analysis of the interactions of the Pernambuco Innovation System (SPIn)
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Authors - Anderson Diego Farias da Silva
Abstract - The role of innovation in the current context has led several governments to develop public policies capable of influencing public management. In view of this, this study aims to understand to what extent the relational approach of institutional theory can contribute to understanding the organization of production systems in certain innovation environments. To this end, a qualitative case study was conducted through the investigation of the Pernambuco Innovation System (SPIn). Documentary research and interviews were adopted as the research method. Regarding the results, SPIn analyses were carried out based on three dimensions: regulations; organizations; and institutions. Finally, it is suggested that an alternative path be indicated for the viability of the new Science, Technology, and Innovation Strategy for Pernambuco (2023-2027), through the adoption of a regulated and short-term regional governance structure.
Paper Presenters
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Walbrook Suite - 1C America Square Conference Centre, London, United Kingdom

11:45am GMT

Replica Placement Strategy (RPS) for Effective Network Usage in Cloud Environment
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Authors - Fazlina Mohd Ali, Rohaya Latip, Syahanim Mohd Salleh, Nurhizam Safie Mohd Satar, Azran Ahmad, Surya Sumarni Hussein
Abstract - The cloud environment is substantial for streamlined operations and improved efficiency in the current digital landscape. Nevertheless, any systems on cloud platforms ought to face vulnerability and are bound to have a risk of failures and data loss. To ensure business continuity is preserved in any circumstances, data replication emerges as one of the solutions to hinder disruptions in cloud environments. This study explores the significant role of data replications with a multi-objective strategy and summarizes contributions developed by researchers to ensure replica placement guarantees the enhancement of numerous performance metrics. The prominent challenge is developing a comprehensive data replication strategy with a minimal replication process yet guarantees efficient network usage. Inefficient network usage remains a crucial problem derived from inappropriate data center selection criteria in cloud replica placement strategies. Therefore, to alleviate the issue, this research proposed a Replica Placement Strategy (RPS) for Effective Network Usage in a Cloud Environment, which identified decisive factors when selecting a data center to place replica copies. The key factors are file merit, space merit, and connection merit. The CloudSim simulation tool was used to conduct a comprehensive experiment, and the results proved that the proposed RPS significantly enhanced effective network usage by 76% and 109% betterments on average, outperformed the other two similar research work strategies, respectively. The key contributions will be visible to researchers exploring more explicit strategies in advancing cloud replication for future research demands.
Paper Presenters
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Newgate Suite - 1B America Square Conference Centre, London, United Kingdom

11:45am GMT

SKY CONTROL: A novel concept for a vendor-agnostic multi-cloud framework to optimize cost control and risk management for small and medium-sized enterprises
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Authors - Christian Baun, Henry-Norbert Cocos, Martin Kappes
Abstract - Multi-cloud setups have become increasingly common in the industry, and adopting this method brings many opportunities for companies like vendor diversification, a selection of Best-of-Breed Services, and an increased resilience of the services used. However, this approach also brings challenges for the users, such as increased complexity of managing the services across vendors and increased vulnerability of the services. Another unsolved issue is the need for more transparency in running costs of using multiple services from many vendors and the compliance of the services with binding regulations. Our proposed framework, SKY CONTROL, will tackle those challenges and develop a comprehensive planning tool for complex, distributed IT infrastructures. With our innovative solution approach, we will conduct static and dynamic resource analyses of the resource inventory. In addition, a cost calculator for hybrid cloud users will be implemented, providing an aggregated cost overview of cloud and on-premise systems. At the same time, critical data requires an equally transparent option for risk management and information governance so that data and processes in hybrid infrastructures are always located on systems with an appropriate level of protection. Our solution marks the first concrete implementation of the innovative Sky computing concept for small-medium enterprises.
Paper Presenters
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Ludgate Suite - 1F America Square Conference Centre, London, United Kingdom

11:45am GMT

STUDENT SATISFACTION WITH THE USE OF MALAYSIAN SIGN LANGUAGE LEARNING MOBILE APPLICATIONS
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Authors - Syar Meeze Mohd Rashid, Muhammad Najwan Mat Zali
Abstract - This study identifies the satisfaction levels associated with the use of mobile applications in learning Malaysian sign language. With the advancement of digital technology, various applications have provided accessible and interactive platforms that facilitate learning. This research involved a survey of 30 students enrolled in a Malaysian sign language course, utilizing descriptive analysis and the Statistical Package for the Social Sciences (SPSS) for data assessment. The findings indicate a high overall satisfaction score among participants, showing that students are pleased with using the application for learning Malaysian sign language. However, this satisfaction study faces challenges, including the diverse backgrounds of users, technology accessibility, and the need for long-term effectiveness assessment. Regular user feedback is essential for the continuous improvement of the application. In conclusion, while this application demonstrates a positive impact on student satisfaction, further investigation is needed into its usability to maximize the effectiveness of application-based learning in the long term.
Paper Presenters
Tuesday February 18, 2025 11:45am - 12:00pm GMT
Aldgate Suite - 1E America Square Conference Centre, London, United Kingdom

12:00pm GMT

A Matched Pilot Resource Allocation Scheme for Downlink OFDMA systems
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Authors - Krishnan B. Iyengar, Raghavendra Pal, Upena D. Dalal, Anupam Shukla
Abstract - Channel Estimation in OFDMA communication systems requires transmission of pilot symbols. For a frequency selective fading channel, multiple pilots are needed in a single OFDM frame for the receivers/users to perform channel estimation. Comb-type pilots are a commonly used pilot allocation technique. However, such estimation techniques may have high computational complexity. In this work, we propose a Matched Pilot Resource Allocation approach which concentrates allocation of pilot subcarriers to particular users, to reduce the computational complexity at each of the receivers. In particular, we show that the proposed pilot assignment technique’s reduction in complexity improves as the number of channel taps increases. We also show that the proposed technique’s complexity reduction scales well in NOMA-OFDMA systems, where multiple users’ information may be multiplexed on a single sub-carrier.
Paper Presenters
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Bishopsgate Suite - 1A America Square Conference Centre, London, United Kingdom

12:00pm GMT

Agricultural Carbon Emission Prediction using Generalised Multi-Crop Machine Learning Models
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Authors - Raz Ehsani, Lakshmi Babu-Saheer
Abstract - This study explores the applicability of generalised machine learning models for predicting carbon emissions across multiple crops at a single location in Iran. Thirteen agricultural crops including alfalfa, beans, cabbage, carrots, corn, cucumbers, irrigated barley, irrigated wheat, lentils, onions, sugar beets, tomatoes, and watermelons are investigated. To enhance the dataset, Conditional Tabular Generative Adversarial Network (CTGAN) data augmentation approach is performed, generating 1,000 sample points for each crop. Various machine learning models, including K-Nearest Neighbours (KNN), Random Forest (RF), LASSO Regression, Multiple Linear Regression (MLR), Neural Networks (NNR), and a novel hybrid model; Recursive Feature Elimination with Heuristic Nearest Regression (RFE-HNR), are employed individually for each crop and collectively in a combined data model. The crops are categorised to facilitate carbon factor prediction model for category of crops. Results are compared with baseline cool farm Life Cycle Assessment tool. RF models consistently performed better on different combinations of datasets. This work provides valuable insights into the performance of diverse models in managing complex agricultural datasets and underscores the potential of data-driven approaches in optimising emissions, thereby contributing to sustainable agricultural practices.
Paper Presenters
avatar for Raz Ehsani

Raz Ehsani

United Kingdom
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Ludgate Suite - 1F America Square Conference Centre, London, United Kingdom

12:00pm GMT

Improvement of Replicas Placement in DFS
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Authors - Ladislav Pesicka, Lubos Matejka
Abstract - Distributed File Systems (DFS) have been used to store and access data for many years. Recently, with the increase in the number of mobile devices and their connection speeds using 5G, there is a need to optimize the structure of DFS to meet these demands. By placing data replicas appropriately, the performance of the DFS system can be improved. This paper discusses the effect of replica placement on improving DFS parameters.
Paper Presenters
avatar for Ladislav Pesicka

Ladislav Pesicka

Czech Republic
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Aldgate Suite - 1E America Square Conference Centre, London, United Kingdom

12:00pm GMT

Improving Machine Learning-based Activity Type Prediction from Time-Series EEG Data
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Authors - Syed Muhammad Raza Abidi, Tomas Emmanuel Ward, David C. Henshall, Gabriel-Miro Muntean
Abstract - Machine learning is essential to the development of personalized medicine, brain-computer interfaces (BCIs), classification and prediction, and the detection and elimination of artifacts in EEG signal data, among other applications. This work, in order to differentiate between target and non-target rapid serial visual presentation (RSVP) experimental conditions predicts the spatiotemporal patterns of entire trial types. We developed an optimized pipeline to preprocess EEG time-series data in a way that maximizes the relevance of event-related potentials (ERPs). We then utilized the machine learning techniques with the open-source EEG software, namely the MNE-Python tools (library), using the performance criteria, area under the receiver operating characteristic curve (ROC-AUC) with 5-fold cross-validation to predict the trial types.
Paper Presenters
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Walbrook Suite - 1C America Square Conference Centre, London, United Kingdom

12:00pm GMT

Predicting Students Academic Performance Based on Self-Cognitive Factors Using Machine Learning Algorithms
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Authors - Stephen Opoku Oppong, Benjamin Ghansah, Christopher Yarkwah, Einstein Kow Essibu, Winston Kwamina Essibu
Abstract - A significant problem in Educational Data Mining (EDM) receiving increasing attention is its ability to predict learners' academic performance. The ability to do this largely depends on the availability of datasets to train models. Conventionally, learners who are likely to fail a particular subject are identified through formative assessments and assisted by facilitators through guidance sessions and the implementation of interventions to help them optimise learning paths. Teachers also recommend personalised learning resources intended to build learners' capacity and understanding of the subject, which also hangs on the availability of data. In this study, Generative Adversarial Networks (GAN) and Synthetic Minority Over-Sampling Technique (SMOTE) are used to generate synthetic data to augment existing data to help predict student performance using self-cognitive variables. The purpose was to balance the original dataset to avoid bias. The implementation was done using six machine learning classifiers (Naïve Bayes, Decision Tree, Extra Trees, K-Nearest Neighbor, Logistic Regression and Random Forest) to test which preprocessing method gives optimum performance. Extensive experimental results demonstrate that the GAN approach achieved a superior performance accuracy of 99.98%, significantly outperforming the SMOTE method, which gained 97.36%.
Paper Presenters
avatar for Einstein Essibu

Einstein Essibu

United States of America
avatar for Winston Essibu

Winston Essibu

United States of America
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Fleet Suite - 1D America Square Conference Centre, London, United Kingdom

12:00pm GMT

Supervised Batch Normalization
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Authors - Bilal FAYE, Hanane AZZAG, Mustapha LEBBAH
Abstract - Batch Normalization (BN) enhances neural network generalization and accelerates training by normalizing mini-batches to a uniform mean and variance. However, its performance degrades with diverse data distributions. To overcome this, we introduce Supervised Batch Normalization (SBN), which extends normalization by leveraging multiple mean and variance parameters to account for contexts identified prior to training. These contexts—defined explicitly (e.g., domains in domain adaptation) or implicitly (e.g., via clustering algorithms)—ensure effective normalization for samples with shared features. Experiments across single-and multi-task datasets demonstrate the superiority of SBN over BN and other normalization techniques. For example, integrating SBN with Vision Transformer yields a 15.13% accuracy boost on CIFAR-100, while in domain adaptation scenarios, SBN with AdaMatch achieves a 22.25% accuracy gain on MNIST and SVHN compared to BN. Our code implementation is available on our GitHub repository: https://github.com/bfaye/ supervised-batch-normalization.
Paper Presenters
Tuesday February 18, 2025 12:00pm - 12:15pm GMT
Newgate Suite - 1B America Square Conference Centre, London, United Kingdom

12:15pm GMT

Automatic Annotation of Clinicaltrials.gov Entities using Large Language Models
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Authors - Pouyan Nahed, Sepideh Farivar, Kazem Taghva
Abstract - This paper presents a large-scale biomedical Named Entity Recognition (NER) dataset automatically annotated using a Large Language Model (LLM) applied to the eligibility criteria from ClinicalTrials.gov. The dataset comprises over 4.6 million named entities, covering categories such as diseases, interventions, outcomes, and participants. A pseudo-labeling approach was employed to generate annotations with soft labels, providing confidence scores for each entity. We address challenges related to entity ambiguity and label inconsistency by introducing a structured mapping strategy to ensure uniformity across the dataset. The resulting dataset is a valuable resource for advancing tasks such as NER, information extraction, and text classification in biomedical research. By making this dataset publicly available, we aim to support the development of AI-driven healthcare applications.
Paper Presenters
avatar for Kazem Taghva

Kazem Taghva

United States of America
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Ludgate Suite - 1F America Square Conference Centre, London, United Kingdom

12:15pm GMT

Live Video Streaming from Helicopters to Ground via Terrestrial 5G and LTE Networks
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Authors - Shu Sum Law, Francis C.M. Lau
Abstract - Low latency and reliable connectivity are essential for live video streaming from helicopters in mission-critical scenarios, such as search and rescue missions and law enforcement activities. This paper addresses the challenges of achieving low latency and reliable connectivity for live video streaming from helicopters in mission-critical scenarios. We propose a location-based adaptive model leveraging bonded LTE and 5G cellular networks to dynamically adjust to varying cellular network conditions for aerial connection. Additionally, a packet-delay sliding-window (PDSW) channel model is presented for live video streaming from helicopters, along with a practical location-based adaptive Forward Error Correction (FEC) system to enhance error correction efficiency. Experimental results demonstrate the e effectiveness of the proposed approach in mitigating packet loss and ensuring reliable video streaming from helicopters.
Paper Presenters
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Walbrook Suite - 1C America Square Conference Centre, London, United Kingdom

12:15pm GMT

Navigating Market Volatility in Agriculture through Digital Analytics: Lessons from Indonesia's Coffee Sector
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Authors - Mohammad Hamsal, Faisal Binsar, Sri Bramantoro Abdinagoro, Gaguk Dwi Prasetyo Atmoko, Dani Rusli Utama
Abstract - Indonesia, as one of the world's largest coffee producers, faces significant market volatility that impacts the incomes of local coffee farmers. Despite rising global coffee prices, farmers often do not receive proportional benefits, raising important questions about the distribution of value in the sector and indicating the need for more innovative and robust approaches to market analysis. This study aims to analyze the discourse around Indonesian coffee in digital media and interpret the findings in the context of market dynamics and policy implications. The use of digital analytics and Gibbs Sampling for Dirichlet Multinomial Mixture (GSDMM) identified three dominant topics: (1) Coffee prices and economic stability, (2) Economic development and coffee industry growth, and (3) The role of farmers in the coffee industry growth. The analysis also shows a significant correlation between discussions about farmers and the economic aspects of the industry, underscoring the importance of economic and industry factors in farmers' lives. The implications of this study are highly relevant for stakeholders and policymakers, as the results can be used to design more synergistic policies that support industry growth while also addressing its direct impacts on farmers. The findings provide a data-driven basis for policy recommendations that can reduce market volatility and support the sustainability of the coffee industry.
Paper Presenters
avatar for Faisal Binsar

Faisal Binsar

Indonesia
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Aldgate Suite - 1E America Square Conference Centre, London, United Kingdom

12:15pm GMT

Optimizing Complex Variables for Gas Leak Detection and Grid Stability in Integrated Natural Gas and Green Hydrogen Power Systems
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Authors - Heictor Costa, Danielle Fortunato, Fernando Von Zuben, Denis Costa, Marcus Nunes
Abstract - This paper presents a novel approach to optimise complex variables for stabilising integrated power grids, focusing on the detection and mitigation of gas leaks in combined natural gas and green hydrogen systems. The research addresses the critical challenges of maintaining grid stability and reliability in the transition to renewable energy sources. By leveraging complex analysis in fluid mechanics, the study proposes an innovative method for gas leak detection using the complex potential and streamline distortion analysis. The methodology includes a genetic algorithm with multi-level optimization to enhance system stability while minimizing costs. The paper demonstrates the application of this approach on a 9-bus 8-node integrated grid, showcasing its potential to improve safety, reduce economic losses, and enhance the overall efficiency of power systems. This work was able to stabilise the integrated grid, as to maintain the same power and gas demand supply, by redirecting the gas route, decreasing the damage and cost caused by the gas leak, which promoted a economy of $14,000 dollars per active day of the grid.
Paper Presenters
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Bishopsgate Suite - 1A America Square Conference Centre, London, United Kingdom

12:15pm GMT

Political Security Threat Prediction with Transformer-Based Large Language Model
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Authors - Liyana Safra Zaabar, Noor Afiza Mat Razali, Sharifah Nabila S Azli Sham, Fazlina Mohd Ali
Abstract - The increasing spread of textual content on social media, driven by the rise of Large Language Models (LLMs), has highlighted the importance of sentiment analysis in detecting threats, racial abuse, violence, and implied warnings. The subtlety and ambiguity of language present challenges in developing effective frameworks for threat detection, particularly within the political security domain. While significant research has explored hate speech and offensive content, few studies focus on detecting threats using sentiment analysis in this context. Leveraging advancements in Natural Language Processing (NLP), this study employs the NRC Emotion Lexicon to label emotions in a political-domain social media dataset. The Bidirectional Encoder Representations from Transformers (BERT) model was applied to improve threat detection accuracy. The proposed model achieved an AUC value of 87%, with the BERT model achieving 91% accuracy, 90.5% precision, 81.3% recall and F1-score of 91%, outperforming baseline models. These findings demonstrate the effectiveness of sentiment and emotion-based features in improving threat detection accuracy, providing a robust framework for political security applications.
Paper Presenters
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Newgate Suite - 1B America Square Conference Centre, London, United Kingdom

12:15pm GMT

Public Perception of ICT and Governance of Educational Curriculum Transformation: Analyzing Online Discussions in Indonesia
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Authors - Faisal Binsar, Stefanus, Muhammad Bayu, Abdul Razak, Gaguk Dwi Prasetyo Atmoko
Abstract - This study aims to evaluate public perceptions of implementing the Independent Curriculum in Indonesia, focusing on the positive and negative aspects that emerge in online discussions. Using a digital analytics approach, this study collects and analyzes data from various social media platforms to understand how the public responds to changes in the education system. Through topic analysis using the Latent Dirichlet Allocation (LDA) algorithm, this study successfully identified four main topics in positive and negative sentiments. In positive sentiments, the topics identified include independence and enthusiasm for learning, expectations for students, participation in education, and the development of independent curriculum and learning programs. In contrast, for negative sentiments, topics include dissatisfaction with the implementation of the policy, limitations in teaching and learning, teacher readiness and educational infrastructure, and the impact of the curriculum on education. These results indicate that despite high aspirations and some positive outcomes from implementing the Independent Curriculum, there are still significant challenges in its implementation that influence negative perceptions from the public. This study contributes to educational theory by emphasizing the importance of understanding public perception as an important factor in evaluating education policies. The implications of these findings suggest that policymakers need to consider input from the public to improve and adjust education policies more effectively.
Paper Presenters
avatar for Stefanus

Stefanus

Indonesia
Tuesday February 18, 2025 12:15pm - 12:30pm GMT
Fleet Suite - 1D America Square Conference Centre, London, United Kingdom

12:30pm GMT

A New Optimized, Green Computational Intelligence, Secure, and Sustainable Solutions in Precision Farming
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Authors - Hicham ESSAMRI, Abderrahim BAJIT, Khalid BOUALI, Youness ZAHID, Rachid EL BOUAYADI
Abstract - The need for sustainable agricultural techniques has become a necessary need today, as the urgent need for management of vital agricultural resources such as water, energy and fertilizers has triggered the alarm signal and immediately imposed an urgent resolution on a global scale. The new technologies proposed by precision agriculture in agricultural greenhouses IOT platforms have offered innovative environments. The growth of hardware components inside its nodes and the outcomes on an intelligent platform show how processing power and energy efficiency have evolved over time. Future developments in intelligent agriculture are made possible by these strategies. Computational intelligence allows for energy sustainability, perceptual encoding reduces communication time, while visual watermarking optimizes data integrity protection. Moreover, data analysis becomes the main challenge in precision agriculture, because on the computing machine side of the agricultural greenhouse has become the centerpiece in terms of intelligent solicitation of data instead of a classic collection from the node sensors [1]. To intelligently collect the data when needed, this aim is reached on the one hand, between a node and its relative sensors, and on the other hand between the cloud and the IoT nodes. Optimizing such behavior on the cloud side requires a good understanding, modeling and validation based on a clear analysis of the data. Thanks to computational intelligence, we can approximate the results of lost and inaccurate sensors and generate the required forecasts using data analysis tools [2], thus ensuring that farmers make informed decisions and achieve better results. Methods that support objective and subjective optimization of PAYLOAD and have a notable impact on the overall greenhouse performance, such as data optimization, energy savings, and node state management. This objective is clearly ensured by successively deploying prediction of missing or unwanted data, visually based quality coding, energy efficiency in terms of idling any sleeping node, and synchronizing their handshake with Cloud. These features, as detailed later in this article, enhance precision farming performance.
Paper Presenters
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Fleet Suite - 1D America Square Conference Centre, London, United Kingdom

12:30pm GMT

A Two-Staged Intelligent Dynamic Video Summary based on Dictionary Learning and Multi-Objective Genetic Algorithm
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Authors - Aryan Kasare, Mohd Kaif Idrisi, Asif Iqbal, Dipti Jadhav
Abstract - Video Summarization (VS) is a methodology that highlights the main contents or events from the entire video in the form of keyframes. This paper presents a two-staged intelligent dynamic video summarization technique. In the first stage, SURF keypoints are extracted from the video frames and are given as input to a dictionary learning algorithm to identify the keyframes. In the second stage, the aim is to optimize the Stage-1 dynamic video summary using a multi-objective genetic algorithm to remove any redundancy in the generated video summary. The video summary results of the videos from the SUMME dataset demonstrate the validity of the proposed work. The subjective and objective performance analysis values justify the efficiency of the proposed algorithms to generate an optimized video summary.
Paper Presenters
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Ludgate Suite - 1F America Square Conference Centre, London, United Kingdom

12:30pm GMT

CiBit: A Cryptocurrency for Academic Impact
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Authors - Nadav Voloch, Noa Voloch-Bloch, Guy Bostock, Shaked Pen Graitzer
Abstract - Cryptocurrencies have been an emerging venture for the past decade and a half. Their evaluations and amounts are increasing in the past couple of years. In this research we developed a cryptocurrency that aims to manifest academic reputation in a digital form. With the rise of mainstream cryptocurrency, CiBit aims to innovate and capitalize on the academic credentials system by integrating a new form of credit. Academic research is essential for building a reputation in academia, benefiting both researchers and their institutions. However, the true impact of research on academic society has remained largely unmonetized. CiBit Cryptocurrency seeks to address this gap by developing a non-mineable cryptocurrency where the generation of coins is directly linked to the number of citations and publications of academic articles. The objective of CiBit is to create a decentralized system where the authority over the currency is distributed among universities and academic institutions, which will act as banks and determine the currency's value. This decentralized approach ensures that no single entity has central control over the currency, promoting fairness and transparency in its valuation. Additionally, the CiBit platform includes a digital wallet feature, facilitating coin transactions between individuals and allowing withdrawals from academic institutions. By linking academic impact to a quantifiable and profitable currency, CiBit aims to provide a novel incentive for researchers and institutions, thereby enhancing the recognition and economic value of academic contributions.
Paper Presenters
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Newgate Suite - 1B America Square Conference Centre, London, United Kingdom

12:30pm GMT

Data Mining and Cybersecurity-Driven Solutions for CO2 Emissions Reduction of Different Maritime Shipping: A Multi-Faceted Analysis
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Authors - Saeed Rahimpour, Mahtab Shahin, Yigit Gulmez, Sanja Bauk
Abstract - Using advanced data mining techniques, specifically association rule mining (ARM) and clustering, this study presents a novel approach to maritime CO2 emissions analysis, revealing hidden patterns and relationships that traditional statistical models cannot capture. Various ship types can be analyzed for operational and technical efficiency to provide actionable insights into reducing emissions. In addition, robust cybersecurity measures are integrated to ensure the integrity and reliability of the data, allowing compliant and secure decision-making. The findings indicate that oil tankers and LNG carriers, which emit significant amounts of pollution, are prime candidates for retrofitting and implementing cleaner technologies in the near future.
Paper Presenters
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Walbrook Suite - 1C America Square Conference Centre, London, United Kingdom

12:30pm GMT

MultiModel and Multi-Step LSTM Model for Landslide Prediction
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Authors - Sahil Sankhyan, Praveen Kumar, Priyanka, K V Uday, Varun Dutt
Abstract - Landslides are a major natural hazard that can cause significant damage and loss of life. They are often triggered by heavy rainfall, earthquakes, or other factors that can destabilize the soil and rock. To mitigate risks associated with landslides, it is important to predict where and when they are likely to occur. In this study, we developed a multimodel and multistep LSTM (MML) model for landslide prediction. The models were trained on historical weather and soil property data from Kamand Valley, Himachal Pradesh, India. Kamand Valley is particularly susceptible to landslides, and the data collected in this study provides a feasible resource for developing and testing landslide prediction models. The MML model is a novel approach to landslide prediction. The model was composed of two LSTM layers and was trained to predict the weather and occurrence of landslides at multiple time steps in the future. LSTM layers were used to learn the long-term temporal dependencies in the data. The model was evaluated using a variety of metrics, including mean absolute error (MAE) and F1 score. The results showed that the model could achieve a high accuracy in predicting landslide occurrence. The final model is deployed in a web service, where it can be used to make real-time predictions. The web service is designed to be user friendly and easy to use, and can be accessed by anyone with an internet connection.
Paper Presenters
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Bishopsgate Suite - 1A America Square Conference Centre, London, United Kingdom

12:30pm GMT

Spinnability Simulation using a Linear Combination of Deviatoric Stress and a Spring Connection among Particles
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Authors - Nobuhiko Mukai, Yansheng Fang, Youngha Chang
Abstract - One of the most challenging issues is visualizing liquid behavior based on physical simulation since the boundary is clear while its shape dynamically changes. It is simpler to represent Newtonian fluid since the shearing stress is proportional to its shearing velocity. On the other hand, a lot of non-Newtonian fluids are there. One of the non-Newtonian fluids is viscoelastic fluid, which has two properties: viscosity and elasticity. The viscoelastic fluid shows a unique behavior of “spinnability”. If it is stretched, the middle part becomes narrow. Then, it rapidly shrinks after the rupture. The behavior is so complex that the constitutive equation has not been established. Therefore, spinnability simulation has been performed by defining the deviatoric stress that is combined with viscosity and elasticity. This paper introduces two methods to represent spinnability. One is a combination of deviatoric stress that is combined linearly with viscous and elastic stresses, where the weight of elastic stress depends on the strain of the fluid, and the other is a spring connection among particles that construct the fluid. Finally, the relationship between the acceleration to be added for stretching and the elongation of the fluid has been found by comparing the simulation results with real viscoelastic fluid.
Paper Presenters
Tuesday February 18, 2025 12:30pm - 12:45pm GMT
Aldgate Suite - 1E America Square Conference Centre, London, United Kingdom

12:45pm GMT

A Novel Validation Metric of Green and Visually Optimized Integrity Protection of Precise Farming Plant’s Data
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Authors - Bouchra Essounaini, Abderrahim Bajit, Meryam Melhaoui, Hicham Essamri, Youness Zahid, Abdelhadi Allali, Rachid El Bouayadi
Abstract - The decline in the quality of agricultural products is a worrying phenomenon that results from several factors such as intensification of industrial agriculture, soil exhaustion, climate change, and transformation and storage practices. Awareness of these issues is crucial to reversing the trend and improving again the quality of agricultural products. This situation can lead to disruptions with varying impacts on the quality of agricultural products. This paper discusses an optimized method to improve information integrity in IOT agricultural platforms based on watermarking and blockchain technique. The purpose of this method is to hide a farming plant’s objective data in the subjective one and allows for the creation of a secure and transparent agricultural data ecosystem. A farming company uses IoT sensors. The sensor data is digitally tattooed and then recorded in a blockchain. The information can be accessed by regulators to verify that the crops comply with current standards, and consumers can view the complete production history of the product, ensuring its quality and authenticity. The combination of blockchain and watermarking in the agricultural sector provides a powerful framework to ensure the authenticity and integrity of data, guaranteeing its traceability while protecting it from any unauthorized manipulation, enhancing transparency, trust, and efficiency in the agricultural supply chain. This paper aims to optimize PAYLAOD integrity protection in IOT platforms by deploying an innovative and visually optimized watermarking coding that perceptually hides a plant’s objective data in the subjective one. This is done with a view to offering green, and secured solutions to agricultural greenhouse defense and human security. Based on the human visual system quality properties, our innovative solution downsizes the PAYLOAD’s size, improves its coding quality, reduces the energy consumption and time costs.
Paper Presenters
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Fleet Suite - 1D America Square Conference Centre, London, United Kingdom

12:45pm GMT

Continual Learning at the Edge: An Agnostic IIoT Architecture
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Authors - Pablo Garcia-Santaclara, Bruno Fernandez-Castro, Rebeca P. Diaz-Redondo, Carlos Calvo-Moa, Henar Marino-Bodelon
Abstract - The exponential growth of Internet-connected devices has presented challenges to traditional centralized computing systems due to latency and bandwidth limitations. Edge computing has evolved to address these difficulties by bringing computations closer to the data source. Additionally, traditional machine learning algorithms are not suitable for the needs of edge-computing systems, where data usually arrives in a dynamic and continual way. However, incremental learning offers a good solution for these settings. Consequently, we introduce a new approach that applies the incremental learning philosophy within an edge-computing scenario for the industrial sector with a specific purpose: real time quality control in a manufacturing system. Applying incremental learning we reduce the impact of catastrophic forgetting and provide an efficient and effective solution.
Paper Presenters
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Walbrook Suite - 1C America Square Conference Centre, London, United Kingdom

12:45pm GMT

Digital Twin-Aided Contextual Bandit Learning based Two-Sided Matching for Task Offloading in Dynamic Fog Computing Networks
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Authors - Hoa Tran-Dang, Dong-Seong Kim
Abstract - This paper introduces a novel approach, Digital Twin-Aided Contextual Bandit Learning based Two-Sided Matching (DTCBL-TSM), to optimize computation offloading in dynamic fog computing networks (FCNs). Our proposed framework leverages digital twins (DTs) to enable precise monitoring and prediction of resource states of fog nodes (FNs). By integrating contextual bandit learning, our approach dynamically adapts to changing network conditions, learning optimal offloading strategies over time. Indeed, the two-sided matching mechanism ensures a balanced and fair allocation of tasks to fog nodes, considering both the task requirements and node capacities. Extensive simulations demonstrate that DTCBL-TSM outperforms existing methods in terms of task completion time, resource utilization, and adaptability to network dynamics.
Paper Presenters
avatar for Hoa Tran-Dang

Hoa Tran-Dang

South Korea
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Newgate Suite - 1B America Square Conference Centre, London, United Kingdom

12:45pm GMT

Ethical Thinking in Cyber Resilience: Lessons from Malaysian Cyber Leaders
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Authors - Nurul Nuha Abdul Molok, Zahidah Zulkifli, Jongkil Jay Jeong, Sean Manard, Atif Ahmad
Abstract - This study explores the intersection of ethical thinking and cyber resilience within the context of Malaysian government agencies. Given the increasing reliance on digital infrastructure and the rising threat of cyber-attacks, the need for robust cyber resilience strategies developed by people who are imbued with ethical values, is more critical than ever. However, the role of ethical considerations in shaping these strategies remains underexplored, especially in the public sector. Through a qualitative approach employing interviews as the primary data collection method and thematic analysis as the method for qualitative data analysis, this research proposes the importance of ethics in developing Malaysia’s cyber resilience. From the analysis, 4 themes have been identified: moral and spiritual beliefs, alignment to the government agenda, responsibility and long-term thinking. Findings suggest that ethical thinking plays a crucial role in decision-making processes which influence the development and implementation of cyber related strategies, policies, and law in Malaysian public sector organisations. This study proposes the integration of ethics in the development of national cybersecurity strategies, to make the country more resilient to protect itself against cyber threats.
Paper Presenters
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Bishopsgate Suite - 1A America Square Conference Centre, London, United Kingdom

12:45pm GMT

Evaluating Obstacles to Industry 4.0 in Cambodia’s Garment Sector using Interpretive Structural Modeling
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Authors - Siphat Lim, Edman Padilla Flores
Abstract - The investigation into the challenges of adopting Industry 4.0 in Cambodia’s garment sector has identified stringent national policies as the primary obstacle to technological progress. Furthermore, the MICMAC analysis has high-lighted the presence of a singular autonomous variable, specifically the absence of cyber-physical systems. In Cluster II, the variables related to extended learning cycles, the lack of advancements in mechatronic systems, and limited agility within supply chains exhibited the most significant interconnections, with insufficient training closely following in importance. Notably, Cluster III lacked any interconnected variables. Among the numerous factors analyzed, the implementation of rigorous national policies demonstrated the most substantial impact, followed by a lack of dedication from senior management, inadequate financial resources, and shortcomings in information technology infrastructure, all of which were recognized as additional challenges. These challenges are classified as independent or driving factors, and addressing them, since they represent the fundamental causes, would naturally lead to the removal of obstacles present at higher levels.
Paper Presenters
avatar for Siphat Lim

Siphat Lim

Cambodia
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Aldgate Suite - 1E America Square Conference Centre, London, United Kingdom

12:45pm GMT

Unraveling Social Network Factors in Predicting Depression with a Machine Learning Approach
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Authors - Eunjae Kim, Kyu-man Han, Eun Kyong Shin
Abstract - This study identifies the key factor contributing to major de-pressive disorder using a machine learning approach. Depression is a global public health concern, particularly significant in South Korea due to its strong association with high suicide rates. While demographic, socioeconomic, medical history and social network-focused factors are associated with depression, the consensus on the most critical one is challenging due to methodological limitations. To address this, we applied Partial Least Squares Discriminant Analysis (PLS-DA) and evaluated selectivity ratios. 172 participants were included, 70 depressed and 102 non-depressed, assessed by the Hamilton Depression Rating Scale. To gauge the social embeddings of participants, we used UCLA Loneliness Scale (UCLA-3). We included demographic, socioeconomic, and medical history features for the all-inclusive model. We found that the social network related factors were more critical than others. Seven items from the UCLA, including “No one really knows me well”, had a selectivity ratio greater than 2. No features from other factors were found significant. This study underscores that poor-quality social relationships are strongly associated with depression. These findings can enhance early screening for depression and enable the development of tailored interventions for effective treatment and management.
Paper Presenters
avatar for Eun Kyong Shin

Eun Kyong Shin

Republic of Korea
Tuesday February 18, 2025 12:45pm - 1:00pm GMT
Ludgate Suite - 1F America Square Conference Centre, London, United Kingdom

1:00pm GMT

A New Green, Intelligent, and Autonomous Mobile Node’s Solutions to Precision Farming Sustainability
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Authors - Youness ZAHID, Abderrahim BAJIT, Hiba GAIZI, Hicham ESSAMRI, Rachid EL BOUAYADI
Abstract - The increasing need for sustainable agricultural practices stems from urgent global environmental concerns. Greenhouses offer controlled environments that enhance crop productivity by leveraging technological advancements. A promising solution to these challenges involves integrating smart greenhouses with mobile IoT nodes equipped with autonomous navigation capabilities. This paper presents an advanced mobile node capable of autonomously navigating a predefined path in the greenhouse, utilizing advanced computer vision and deep learning models. The node employs convolutional neural networks (CNNs) to accurately follow the path and pause at each plant, gathering comprehensive objective and subjective data, thereby enhancing traditional IoT functionalities. These IoT devices are critical for presenting data and establishing communication via synchronized wired and wireless systems. However, data security remains a persistent challenge. Through computational intelligence, the system compensates for lost or erroneous sensor data, delivering precise forecasts and enabling farmers to make data-driven decisions to enhance productivity. The mobile node not only collects data but also functions as an IoT hub, managing communication with various sensors and ensuring effective data exchange between IoT nodes and the cloud. This article outlines methods that optimize data analysis, predictive accuracy, and energy efficiency, significantly improving system performance. Our approach offers a solution that addresses sustainability while enhancing operational efficiency in smart greenhouses.
Paper Presenters
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Fleet Suite - 1D America Square Conference Centre, London, United Kingdom

1:00pm GMT

Design and Implementation of Ship Navigational Information System using Smartphone Sensor Data
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Authors - Ryota IMAI, Atsushi ISHIBASHI, Ayoung YANG, Tsuyoshi MIYASHITA, Tadasuke FURUYA
Abstract - To ensure safe navigation, navigators collect various types of navigational information, such as geographical conditions, movements of other ships, and weather and sea state during voyages. In recent years, services providing navigational information via the Internet have been developed. These services are especially useful for small ships with limited costs because they do not require specialized equipment such as AIS (Automatic Identification System). However, these services are inadequate for actual navigation because they cannot obtain information on non-AIS ships. In this research, we propose a ship navigational information system that utilizes smartphone sensor data. By using smartphones equipped with location services, gyroscopes, and acceleration sensors, even non-AIS ships can share their navigational information with surrounding ships. Furthermore, small ships that cannot be equipped with so many nautical instruments can obtain the geographical conditions, the movements of other ships, and the impact of weather and sea state on their own ships via a TCP/IP network. A prototype web application was developed and tested on a real ship to verify that it can provide users with navigational information.
Paper Presenters
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Ludgate Suite - 1F America Square Conference Centre, London, United Kingdom

1:00pm GMT

Meteorological Insights: Scalable Weather Pattern Mining in Tallinn and Tartu
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Authors - Mahtab Shahin, Tara Ghasempouri, Juan Aznar Poveda, Nasim Janatian, Thomas Fahringer, S. A. Shah, Dirk Draheim
Abstract - Accurate weather and climate prediction is essential for early warning systems that improve response strategies to climate-related events. This study explores the use of association rule mining (ARM) techniques to analyze large-scale meteorological datasets. We focus on the weather patterns of Tallinn and Tartu, investigating variables such as wind speed, temperature, precipitation, and humidity, and their influence on weather intensity. A distributed ARM approach is employed using the Apollo framework, which utilizes serverless functions to enhance scalability and performance. Results show Apollo outperforms traditional systems like Apache Spark by approximately 15% in terms of processing speed, while extracting a greater number of meaningful rules. Time-series analysis was also applied to investigate temporal weather trends. Our findings highlight the potential of this approach for enhancing weather prediction systems and offer a foundation for future research in this area.
Paper Presenters
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Newgate Suite - 1B America Square Conference Centre, London, United Kingdom

1:00pm GMT

Natural Language Processing Model for Promoting Performance of E-Business Enterprises
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Authors - Mohamed Elhoseny, Abdelaziz Darwiesh, A.H. ElBaz, Reem Atassi
Abstract - In this article, an NLP model is suggested to improve e-business performance by identifying and assessing the potential risks. Based on surveying the literature, we found that the customers' perceptions are not included in developing e-business enterprises. Moreover, a few articles include managing risks based on the indications of users. So, we propose a model which relies on the indications of social media platforms as a fashionable data repository. This model will help managers in building effective e-business enterprises. Moreover, Twitter's real data for the customers of Amazon Canada is collected and analyzed where the findings refer to the common risks from the point of customers' view are operational and technological risks. Besides, we provide many performance metrics to confirm the suggested methodology’s efficacy.
Paper Presenters
avatar for Mohamed Elhoseny

Mohamed Elhoseny

United Arab Emirates
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Bishopsgate Suite - 1A America Square Conference Centre, London, United Kingdom

1:00pm GMT

Safeguarding Asynchronicity of Lua’s Garbage Collector and Multithreading
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Authors - Melike Aysenur Yildirim, Fadi Yilmaz
Abstract - In contemporary cybersecurity, safeguarding systems from malicious attacks is paramount, given the proliferation of interconnected tools and the continuous efforts of cyber adversaries to disrupt these systems. Researchers have explored various methods to establish secure environments, including advanced techniques for detecting and mitigating cyber threats. One such method, in-lined reference monitoring (IRM), leverages a language-based security approach and has shown promise in enhancing system security. This paper focuses on the application of the IRM through the Lua programming language, renowned for its efficiency and widespread use in diverse domains such as gaming, scientific computing, and the Internet of Things (IoT) devices. We introduce and evaluate LuaLight, a novel, fully automated system designed to transform Lua executables to address use-after-free (UAF) vulnerabilities inherent in the Lua garbage collector (LGC), without necessitating modifications to the vulnerable Lua virtual machines (LVM). LuaLight offers a comprehensive solution to several known security vulnerabilities associated with the LGC, specifically addressing issues identified in CVE-2020-24371 and CVE-2021-44964.
Paper Presenters
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Walbrook Suite - 1C America Square Conference Centre, London, United Kingdom

1:00pm GMT

The Needs for Sustainability Elements and Technology Integration into The Future Fashion Design Curriculum
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Authors - Khairul Azhar Jamaludin, Nor’Aqilah Ahmad Zabidi
Abstract - The increasing need for the fashion industry to transition towards sustainability necessitates the ongoing integration of Education for Sustainable Development (ESD) and digital technology within the education sector and the industry. The fashion industry is widely recognized as a substantial contributor to various social and environmental issues, exerting adverse environmental effects throughout its production processes and consumer disposal practices. In light of pressing global concerns, it is imperative to incorporate sustainability components and digital technology into the fashion design curriculum offered by Technical and Vocational Education and Training (TVET) institutions. This measure is crucial to adequately equipping future students to meet the demands and requirements of the fashion industry. This concept paper explores the necessity of incorporating sustainability elements into the fashion design art curriculum, focusing on aspects of model and theory, current implementation, and integration requirements. Based on the findings, it is recommended that sustainability be incorporated into the fashion design curriculum offered at TVET institutions. Furthermore, this integration should encompass collaborative efforts with the industry, aligning with the requirements of the contemporary industrial revolution.
Paper Presenters
Tuesday February 18, 2025 1:00pm - 1:15pm GMT
Aldgate Suite - 1E America Square Conference Centre, London, United Kingdom

2:15pm GMT

Comparison of Bayesian and Frequentist Neural Networks on Air Quality Time Series Problems
Tuesday February 18, 2025 2:15pm - 2:30pm GMT
Authors - Christopher Sinclair, Saptarshi Das
Abstract - This paper aims to compare Bayesian and frequentist versions of Recurrent Neural Network (RNN) and Long Short Term Memory (LSTM) neural networks via cross validation and bench-marking by addressing a regression problem on a time series dataset using similar network structures. We compare the model performance using the coefficient of determination (R2) score, Pearson and Spearman correlation coefficients by varying size of the dense units in the recurrent layers in both deep learning models.
Paper Presenters
avatar for Christopher Sinclair

Christopher Sinclair

United Kingdom
Tuesday February 18, 2025 2:15pm - 2:30pm GMT
Fleet Suite - 2D America Square Conference Centre, London, United Kingdom

2:15pm GMT

Forensic Voice Analysis: Neural Networks vs. Support Vector Machines for Speaker Identification
Tuesday February 18, 2025 2:15pm - 2:30pm GMT
Authors - Aditya Kurniawan, Budiman Wijaya, Hady Gustianto
Abstract - This study presents a comparative analysis of Artificial Neural Networks (ANNs) and Support Vector Machines (SVMs) for speaker classification tasks, focusing on their performance metrics, computational efficiency, and adaptability to diverse datasets. The research utilized public datasets and volunteer recordings to train models using x-vector embeddings extracted via the SpeechBrain encoder. As for models evaluation, the precision, recall, F1-score, and accuracy were used. Results show that both ANNs and SVMs achieve good robustness in dealing with class imbalance and the overall accuracy for the SVMs (97%) is only marginally better than that for ANNs (96%). Using parameter tuning, this study shows the computation speed of SVMs and flexibility of ANNs and provides some insight on how to choose models in the speaker classification applications.
Paper Presenters
Tuesday February 18, 2025 2:15pm - 2:30pm GMT
Aldgate Suite - 2E America Square Conference Centre, London, United Kingdom

2:15pm GMT

Promoting Active Learning and Autonomy in English as a Second Language (ESL) Classroom through iPads: An Applied Framework
Tuesday February 18, 2025 2:15pm - 2:30pm GMT
Authors - Harwati Hashim, Muhammad Saufi Firdaus Sabudin
Abstract - Technology integration into education has become increasingly crucial for fostering active learning and cultivating learner autonomy, particularly in the context of language acquisition. In the English as a Second Language (ESL) classroom, iPads offer dynamic possibilities for interactive learning, allowing students to engage more meaningfully with language content. However, despite the availability of such tools, many ESL educators continue to rely on traditional, teacher-centred approaches that limit opportunities for student independence. This paper introduces a framework for leveraging iPads to foster active learning and autonomy among ESL learners. The study's primary objective is to develop an applied framework that educators can use to enhance the effectiveness of iPad-based learning activities in ESL classrooms. The framework is based on a thorough review of existing literature on mobile-assisted language learning (MALL), active learning, and learner autonomy, identifying best practices and successful applications of iPads in educational settings. The findings indicate that integrating iPads can significantly boost students’ motivation, engagement, and self-directed learning. Specific strategies highlighted include project-based learning, digital storytelling, and collaborative activities that harness the interactive features of iPads. The study concludes that implementing this framework enables ESL educators to create more student-centred learning environments, equipping learners with the skills needed for both language acquisition and independent learning in a technology-driven world.
Paper Presenters
Tuesday February 18, 2025 2:15pm - 2:30pm GMT
Newgate Suite - 2B America Square Conference Centre, London, United Kingdom

2:15pm GMT

Tale of Two Domains: Cyber-Physical
Tuesday February 18, 2025 2:15pm - 2:30pm GMT
Authors - Benjamin Lampe, Patience Yockey, Virginia Wright
Abstract - As devices and systems continue to modernize and adopt integrated circuits, the use of cyber technology to deploy an application is the expectation. This deployment through cyber assets brings new cyber-risk and cybersecurity is the practice of managing this risk. Cyber-risk is constantly changing due to the speed of technology advancement and the changing quality of the adversary. Cyber-Informed Engineering (CIE) mitigates cyber-risk through engineering controls whereas the traditional practice of cybersecurity mitigates cyber-risk through cybersecurity controls. By clearly defining the cyber-physical boundary, engineering controls and cybersecurity controls can clearly demonstrate their complementary nature to provide layered defenses and successfully mitigate cyber-risk through independent controls. In this paper, a layered model of device decomposition of the cyber-physical boundary is presented to provide clarity where engineering controls are used to reduce cyber-risk within the physics, functional materials, electronic, or integrated circuit layers and where cybersecurity controls are used to reduce cyber-risk within the machine code and application layers. By implementing both traditional cybersecurity controls and engineering controls, a more holistic approach to cybersecurity is achieved in protecting modern devices and systems, as well as a clear awareness in identifying, documenting, and authorizing the system’s cybersecurity protection scheme is achieved.
Paper Presenters
avatar for Benjamin Lampe

Benjamin Lampe

United States of America
Tuesday February 18, 2025 2:15pm - 2:30pm GMT
Walbrook Suite - 2C America Square Conference Centre, London, United Kingdom

2:15pm GMT

Towards Integrated Health Information Systems Implementation in Ghana Health Service
Tuesday February 18, 2025 2:15pm - 2:30pm GMT
Authors - Emmanuel Awuni Kolog, Sancho Ackoussah, Sulemana Bankuoru Egala
Abstract - The fragmented health information system currently operated in Ghana besets universal access to health data and service delivery resulting in the government’s efforts to integrate a coordinated healthcare information system. This study investigates the factors affecting the implementation of integrated national health information systems (IHIS) in Ghana, highlighting the role of digital curiosity among health workers. Analyzing data from 446 Ghana Health Service affiliates using structural equation modeling, key factors identified include task characteristics, organizational viability, and state policy. While economic viability and IT infrastructure were less influential, they may improve with greater government involvement. Digital curiosity significantly mediates the relationship between technological factors and IHIS implementation, suggesting the need to cultivate curiosity among health workers for better health outcomes.
Paper Presenters
Tuesday February 18, 2025 2:15pm - 2:30pm GMT
Bishopsgate Suite - 2A America Square Conference Centre, London, United Kingdom

2:30pm GMT

Balancing Local Production and Imports Using Mixed-Integer Programming: A Case Study of Qatar
Tuesday February 18, 2025 2:30pm - 2:45pm GMT
Authors - Raka Jovanovic, Sa’d Abdel-Halim Shannak, Antonio P. Sanfilippo
Abstract - This paper develops a linear programming model to optimize the balance between domestic agricultural production and imports in Qatar, aligning with the goals of the Qatar National Food Security Strategy (QNFSS). The model incorporates economic, environmental, and policy constraints to ensure food security while addressing critical challenges such as resource limitations, supply chain resilience, and reliance on imports. By evaluating various production and import scenarios, the study identifies strategies to enhance sustainability and reduce vulnerability to global market disruptions. Key findings highlight the importance of optimizing land and water use for local production while diversifying import sources to mitigate risks. The results also emphasize the role of government policies in achieving a sustainable balance between cost-effectiveness and strategic resilience. The proposed approach provides a decision-support framework adaptable to other resource-constrained, import-dependent nations. Future extensions could include dynamic modeling to capture evolving market conditions and nonlinear optimization techniques for more complex trade scenarios.
Paper Presenters
Tuesday February 18, 2025 2:30pm - 2:45pm GMT
Aldgate Suite - 2E America Square Conference Centre, London, United Kingdom

2:30pm GMT

Direction-of-Arrival Estimation Method for Multiple Sources Using Spatiotemporal Spectra with Sparse Bayesian Estimation
Tuesday February 18, 2025 2:30pm - 2:45pm GMT
Authors - Senta Ariizumi, Teruki Toya, Kenji Ozawa
Abstract - This paper presents a novel direction-of-arrival (DOA) estimation method for sound that utilizes sparse Bayesian estimation with a two-dimensional spatiotemporal spectrum as a transfer function. The proposed method is designed for compact microphone arrays, such as those embedded in smartphones, enabling the accurate estimation of multiple sound-source DOAs. This method leverages the sparsity of the spatiotemporal spectrum to enhance robustness and accuracy, addressing the limitations of conventional approaches based on steering vectors. Computational simulations were conducted to explore the optimal parameter settings of the method and evaluate its performance in comparison with that of a traditional method. The results showed that the proposed approach achieved higher accuracy and maintained robust performance in noisy environments. These findings highlight the potential of the method for real-world applications, including sound-source separation and noise suppression for compact devices.
Paper Presenters
Tuesday February 18, 2025 2:30pm - 2:45pm GMT
Fleet Suite - 2D America Square Conference Centre, London, United Kingdom

2:30pm GMT

Enhancing Reliability in Heavy Duty Autonomous Mobile Machines through Fault Tolerant Edge Computing
Tuesday February 18, 2025 2:30pm - 2:45pm GMT
Authors - Kalle Hakonen, Jussi Aaltonen, Kari Koskinen
Abstract - This paper presents a novel fault-tolerant edge computing architecture for heavy-duty autonomous mobile machines in industrial environments. The proposed system integrates two virtual machine hosts with a circular topology of four Ethernet switches, ensuring network resilience and operational continuity. A key feature is the implementation of automatic takeover protocols, enabling seamless transition between hosts during hardware failures. The network infrastructure leverages Rapid Spanning Tree Protocol (RSTP) and additional loop protection mechanisms to maintain stability and achieve rapid fault recovery. Virtual machines running Ubuntu Linux or FreeBSD are strategically deployed to handle specific tasks with critical services replicated for enhanced reliability. The system incorporates advanced data management through a PostgreSQL database with master-slave replication. Comprehensive fault tolerance mechanisms, including redundant connections and graceful degradation capabilities, ensure robust performance in challenging industrial settings. This architecture significantly enhances the reliability and autonomy of heavy-duty mobile machines, addressing the critical need for uninterrupted operation in industrial automation applications.
Paper Presenters
Tuesday February 18, 2025 2:30pm - 2:45pm GMT
Bishopsgate Suite - 2A America Square Conference Centre, London, United Kingdom

2:30pm GMT

The Utilization of E-Government Services and the Paradox of Digital Support in the Pandemic Era
Tuesday February 18, 2025 2:30pm - 2:45pm GMT
Authors - WookJoon Sung
Abstract - The COVID-19 pandemic necessitated an accelerated shift toward digital service provision within the public sector, creating both opportunities and challenges with respect to digital inclusivity. This study critically examines the roles of digital literacy, intrinsic motivation, and digital support in the utilization of COVID-19-related e-government services, revealing a notable paradox: reliance on digital support is associated with diminished engagement in digital public services. Using data from the 2020 Digital Divide Survey by South Korea's National Information Society Agency (NIA), this research employs multinomial logistic regression to elucidate the dynamics at play. Findings suggest that policies advancing digital competence, fostering user autonomy, and addressing restricted access to support in crises are essential for equitable digital service access during future crises.
Paper Presenters
Tuesday February 18, 2025 2:30pm - 2:45pm GMT
Newgate Suite - 2B America Square Conference Centre, London, United Kingdom

2:30pm GMT

Towards adaptive individual health parameter monitoring
Tuesday February 18, 2025 2:30pm - 2:45pm GMT
Authors - Rareș Arvinte, Diana Trandabat
Abstract - In modern hospital approach, patients diagnosis, analysis and administered medication is noted for a better view about his wellbeing but this information are not used to maximum capacity because of the missing analytic and adaptation using multiple parameters. This can improve medical process but also the monitoring of the patient and the possible future outcome of his different illnesses. In this paper, we approach the idea of extracting information from dataset and generating reports, which adapted for medical needs, can outperform automated approaches which not necessary find the real parameters that count.
Paper Presenters
Tuesday February 18, 2025 2:30pm - 2:45pm GMT
Walbrook Suite - 2C America Square Conference Centre, London, United Kingdom

2:45pm GMT

A Detailed Study on Model Reduction Strategy of Unstable Dynamical Systems
Tuesday February 18, 2025 2:45pm - 3:00pm GMT
Authors - Zarin Tasnim, Atia Afroz, Mohammad-Sahadet Hossain, Oshin Mumtaha, Tahiya Tasneem Oishee
Abstract - Model reduction aims to decrease this computational strain by producing significantly smaller models that are faster and less expensive to simulate than the original large-scale systems which play a vital role in the complex physical phenomena. The goal of this paper is to gather information from different existing research works and summarize the current advancements in managing index-2 discrete-time (DT) descriptor-systems. In this paper, we look at three different methods for dealing with DT systems and compare them based on how well they work and how accurate they are. We also study the iterative approaches for the approximate solutions of the Smith method and the Alternating Direction Implicit (ADI) methods are used in different ways to make the Balanced Truncation (BT) method more effective. The iterative rational Krylov algorithm (IRKA) is used to approximate the original model by moment-matching. A comparative analysis of the different Model Reduction Methods (MOR) algorithms is illustrated to recognize the pros and cons of different approaches and the appropriate use of different MOR strategies.
Paper Presenters
avatar for Zarin Tasnim

Zarin Tasnim

Bangladesh
Tuesday February 18, 2025 2:45pm - 3:00pm GMT
Walbrook Suite - 2C America Square Conference Centre, London, United Kingdom

2:45pm GMT

Enhancing Carbon Stock Estimation Using Machine Learning Models: A Comparative Analysis of MLP, RNN, and Autoencoder Approaches
Tuesday February 18, 2025 2:45pm - 3:00pm GMT
Authors - John Khoo, Rayner Alfred, Khalifa Chekima, Rayner Pailus, Chin Kim On, Ervin Gubin Moung, Raymond Alfred, Oliver Valentine Eboy, Normah Awang Besar Raffie, Ashraf Osman Ibrahim Elsayed, Nosius Luaran
Abstract - Climate change remains one of the most pressing global challenges, with effective management of carbon stocks in forests playing a vital role in mitigating its impact. Carbon stock estimation, which quantifies the amount of carbon stored in various biomass forms such as trees, soil, and deceased organic matter, is essential for understanding the role of forests in carbon sequestration and developing strategies to reduce carbon emissions. Traditional methods for carbon stock estimation are often labour-intensive, time-consuming, and lack the precision required for large-scale analysis. Advances in machine learning and remote sensing technologies offer a significant opportunity to improve the accuracy and efficiency of carbon stock estimation. This paper investigates the use of machine learning models, specifically Multilayer Perceptron (MLP), Recurrent Neural Network (RNN), and Autoencoder, for estimating carbon stocks using datasets from sources such as Landsat 7, NDVI, and SAR. Comprehensive analyses were conducted with different train-test splits (70/30, 60/40, 50/50), sample sizes (1,000; 10,000; 100,000), learning rates (0.01, 0.05, 0.1), and epochs (1,000, 10,000, 20,000). The results indicate that the AE model consistently outperforms MLP and RNN models, demonstrating superior predictive accuracy (lower RMSE and MAE) and reliability (higher IOA). The AE model's robustness was evident across all settings, making it the most effective model for carbon stock estimation. In contrast, the RNN model showed higher error rates and longer training times, particularly with smaller sample sizes and higher learning rates. The MLP model exhibited moderate performance. These findings underscore the importance of model selection and hyperparameter tuning in enhancing the accuracy of carbon stock estimation. The study highlights the potential of the AE model as a valuable tool for environmental monitoring and management, providing insights into improving machine learning applications for sustainable ecosystem assessment.
Paper Presenters
avatar for Rayner Alfred
Tuesday February 18, 2025 2:45pm - 3:00pm GMT
Aldgate Suite - 2E America Square Conference Centre, London, United Kingdom

2:45pm GMT

Harnessing Business Intelligence for Sustainable Fraud Mitigation in Fintech Enterprises
Tuesday February 18, 2025 2:45pm - 3:00pm GMT
Authors - Noura Metawa, Atia Hussain, Saad Alsunbul
Abstract - The dynamic landscape of Financial Technology (Fintech) enterprises has catalyzed transformative innovations, yet concurrently spurred challenges in fraud detection and mitigation. This study investigates the integration of Business Intelligence (BI) strategies in addressing sustainable fraud mitigation within the Fintech domain. Grounded in the problem statement of class imbalance, our methodology leverages Adaptive Boosting (AdaBoost) and Synthetic Minority Over-sampling Technique (SMOTE) to augment fraud detection models. Through empirical analyses, including feature importance assessments and ROC curve evaluations, this research reveals the efficacy of BI-driven approaches in enhancing predictive accuracy, discerning critical fraud indicators, and mitigating the challenges posed by class imbalance. Visual representations, such as correlation maps, elucidate intricate relationships among variables, offering crucial insights for model refinement. The study concludes by emphasizing the pivotal role of BI-integrated strategies in fostering resilient fraud mitigation frameworks within Fintech enterprises, paving the way for continued innovation and trust-building in the evolving landscape of financial technologies.
Paper Presenters
avatar for Noura Metawa

Noura Metawa

United Arab Emirates
Tuesday February 18, 2025 2:45pm - 3:00pm GMT
Bishopsgate Suite - 2A America Square Conference Centre, London, United Kingdom

2:45pm GMT

Intelligent Approaches to Automate Quality Control in Manufacturing
Tuesday February 18, 2025 2:45pm - 3:00pm GMT
Authors - Malinka Ivanova, Petya Petkova
Abstract - A manufacturing process, including in the field of electronics, must be organized in such a way as to ensure the production of quality items. This can be achieved by using and following certain quality control procedures and methods. Quality control is usually carried out at several stages of manufacturing to check that there are no deviations in product parameters, thus to ensure compliance with the production specification. Recently, in the scope of concepts related to industry 4.0, techniques from machine learning and artificial intelligence have also been applied, making quality control systems increasingly intelligent, thereby greatly assisting quality experts. The aim of the paper is to map the current scientific achievements regarding the application of machine learning in the field of quality control through bibliometric analysis and to present the results of performed experiments with data from a real manufacturing process. At the created predictive models that solve a classification task with two classes pass or fail the quality check, the following learning methods are applied: a) artificial neural network with optimization of parameters, b) principal component analysis and deep learning, c) Random Forest. Performance of the three learning methods is high as the second method is particularly suitable.
Paper Presenters
Tuesday February 18, 2025 2:45pm - 3:00pm GMT
Newgate Suite - 2B America Square Conference Centre, London, United Kingdom

2:45pm GMT

LODEC: LODCO Edge Computing for TDOA Localization
Tuesday February 18, 2025 2:45pm - 3:00pm GMT
Authors - Isaac Osei Nyantakyi, Samuel Akwasi Danso, Justice Odoom, Patrick Bobbie, Dennis Gookyi, Emmanuel Osei-Mensah
Abstract - Indoor localization is a cornerstone technology for smart environments, including smart homes, factories, and healthcare systems. Time Difference of Arrival (TDoA) techniques are widely recognized for their high localization accuracy but face significant challenges in managing computational demands and latency, particularly in Internet of Things (IoT) scenarios. This paper introduces the Lyapunov Optimization based Dynamic Computation Offloading (LODCO) algorithm, a novel framework designed to enhance TDoA localization by leveraging the capabilities of Mobile Edge Computing (MEC). By dynamically balancing computation between edge servers and local devices, LODCO minimizes latency, optimizes energy consumption, and adapts to diverse environmental and user requirements. The proposed algorithm addresses the inherent trade-offs in TDoA localization systems, achieving reduced execution delays and maintaining precise positioning even in ultra-dense network (UDN) environments characteristic of 5G deployments. Extensive simulations demonstrate that I. O. Nyantakyi et al. LODCO consistently outperforms state-of-the-art algorithms, such as WAKNN-PSO and MLE-PSO, in terms of positioning accuracy, energy efficiency, and bandwidth utilization. These findings highlight the scalability and practicality of LODCO in enabling real-time indoor localization within IoT-driven ecosystems.
Paper Presenters
Tuesday February 18, 2025 2:45pm - 3:00pm GMT
Fleet Suite - 2D America Square Conference Centre, London, United Kingdom

3:00pm GMT

EDV-ML: Enhanced Distance Vector Hop Localization for Wireless Sensor Network using machine learning
Tuesday February 18, 2025 3:00pm - 3:15pm GMT
Authors - Samuel Akwasi Danso, Isaac Osei Nyantakyi, Justice Odoom, Patrick Bobbie, Dennis Gookyi, Emmanuel Osei-Mensah
Abstract - This paper introduces an advanced localization algorithm for wireless sensor networks (WSNs) called Enhanced Distance Vector Hop with Machine Learning (EDV-ML), addressing key limitations of the traditional Distance Vector Hop (DV-Hop) algorithm. The proposed EDV-ML algorithm employs a supervised learning model to correct average hop distances based on network parameters, significantly improving accuracy. Additionally, it integrates reinforcement learning techniques to optimize node coordinates, ensuring reduced localization error. Comprehensive MATLAB simulations highlight the superior performance of EDV-ML compared to traditional DV-Hop and its variants, demonstrating substantial enhancements in positioning accuracy. The proposed approach achieves these improvements without requiring additional hardware or extensive modifications, offering a practical and efficient solution for real-world WSN deployments. This work makes a meaningful contribution to localization algorithms by combining machine learning and optimization techniques to enhance accuracy and robustness.
Paper Presenters
Tuesday February 18, 2025 3:00pm - 3:15pm GMT
Fleet Suite - 2D America Square Conference Centre, London, United Kingdom

3:00pm GMT

Exploring the Evolution of Identity Theft: Emerging Trends, Tactics, and Mitigation Strategies in the Digital Age
Tuesday February 18, 2025 3:00pm - 3:15pm GMT
Authors - Milan Adhikari, Deblin Gautam, Prabhjot Kaur, Dharmrajsinh Vaghela, Saman Shojae Chaeikar, Maryam Khanian Najafabadi
Abstract - This study aims to explore the development of identity theft in the modern world with special attention to contemporary trends, cybercriminals’ techniques, and measures of protection in the context of the digital environment. The paper aims to identify a new generation of identity theft that has evolved from the physical world to the digital environment through phishing, social engineering, account takeovers, synthetic identity theft, and data breaches. It further discusses how new technologies such as Blockchain, Biometrics, and Artificial intelligence affect identity theft prevention and detection. Furthermore, it assesses different measures to reduce the threat, such as awareness raising, legislation, cybersecurity measures, and technologies. In light of this, this research seeks to contribute to the literature by presenting an account of identity theft in the contemporary world and presenting appropriate solutions to mitigate this menace and protect personal information in the current digital age.
Paper Presenters
Tuesday February 18, 2025 3:00pm - 3:15pm GMT
Bishopsgate Suite - 2A America Square Conference Centre, London, United Kingdom

3:00pm GMT

Generation of Clothing Patterns Based on Impressions Using Stable Diffusion
Tuesday February 18, 2025 3:00pm - 3:15pm GMT
Authors - J N Htoi Sann Ja, Kaede Shiohara, Toshihiko Yamasaki, Miyuki Toga, Kensuke Tobitani, Noriko Nagata
Abstract - Personalized products based on individual preferences have been considered to improve personal well-being and consumer satisfaction. This approach helps reduce waste and conserve resources. With artificial intelligence enabling personalization, consumers can easily access products that match their preferences without the need for specialized knowledge or professional expertise. Advances in artificial intelligence, text-to-image models in particular, have enabled the generation of impressive images from textual descriptions. However, existing models lack the ability to generate images based on visual impressions. In this paper, we propose a text-to-image diffusion model that incorporates visual impressions into the image generation process. Our model extends the stable diffusion architecture by introducing a multi-modal input system that processes text descriptions, pattern images, and quantified visual impressions. Experimental validation confirmed the positive correlation between generated and original images across multiple impression metrics, demonstrating the model’s effectiveness in preserving impression-based characteristics. These results suggest that our approach successfully bridges the gap between textual descriptions and visual impressions in image generation.
Paper Presenters
Tuesday February 18, 2025 3:00pm - 3:15pm GMT
Aldgate Suite - 2E America Square Conference Centre, London, United Kingdom

3:00pm GMT

Radio Environment Maps as a Tool for Occupancy Detection in Indoor Environment
Tuesday February 18, 2025 3:00pm - 3:15pm GMT
Authors - Toufiq Aziz, Shafi Ullah Khan, Insoo Koo
Abstract - Smart building functionalities are crucial for optimizing energy consumption through accurate occupancy detection in indoor environments. This study explores a novel approach to occupancy detection by leveraging Radio Environment Maps (REMs). Unlike conventional methods, the proposed technique involves creating detailed REMs across diverse indoor environments, considering variables such as room size, furniture arrangements, and the presence of the occupants. A predictive model is then applied to the REM data to detect occupancy and validate the accuracy of the predictions. The method was tested across multiple scenarios, including rooms with and without occupants, demonstrating its adaptability to different environmental conditions. By analyzing signal behavior variations, this method provides insights into how environmental factors impact detection performance. The results demonstrate the robustness of the proposed REM-based approach, achieving high prediction accuracy and confirming the effectiveness of the REMs in capturing the environmental nuances that influence signal behavior. This approach offers a flexible and scalable alternative for occupancy detection, with potential applications in energy-efficient building management and smart environment design.
Paper Presenters
avatar for Toufiq Aziz

Toufiq Aziz

The Republic of Korea
Tuesday February 18, 2025 3:00pm - 3:15pm GMT
Walbrook Suite - 2C America Square Conference Centre, London, United Kingdom

3:00pm GMT

The Impact of Communication and Leadership on the Implementation of Construction Projects
Tuesday February 18, 2025 3:00pm - 3:15pm GMT
Authors - Ramabele Matlala, Benita G. Zulch, Partson Paradza
Abstract - Communication and leadership are key to the success of the construction of projects. The study's main goal was to evaluate the impact of communication and leadership in the construction sector and its influence on the successful implementation of projects. The researchers adopted a quantitative research approach and data was collected using a standardised questionnaire. A total of 53 survey questionnaires were distributed to professionals employed in the construction sector in North-West Province and 40 were returned. The respondents comprised Engineers, Architects, Quantity Surveyors, Project Managers, and Contractors. It has been discovered that communication and leadership are associated since communication is a fundamental component of leadership. The paper recommends that the transactional leadership approach be employed in construction projects.
Paper Presenters
avatar for Benita G. Zulch

Benita G. Zulch

South Africa
Tuesday February 18, 2025 3:00pm - 3:15pm GMT
Newgate Suite - 2B America Square Conference Centre, London, United Kingdom

3:15pm GMT

From Disadvantaged Beginnings to IT Careers: Exploring Career Decision-Making, Parental Influence, and Technological Aspirations Among South African Students
Tuesday February 18, 2025 3:15pm - 3:30pm GMT
Authors - Mahle Shabalala, Nita Mennega
Abstract - This study explores the influence of parental perspectives on career decision-making among South African students, specifically focusing on Information Technology (IT) careers. In an age of rapid technological advancement, many students are steered toward career paths based on family beliefs, cultural values, and socio-economic factors, sometimes overlooking the growing opportunities within the IT sector. This research is significant because it highlights the role of IT careers in shaping personal and economic success in a digitally-driven world. Using qualitative methods, including interviews with 17 IT professionals, the study examines the factors that influence parents’ career advice to their children, such as job security, financial freedom, and the integration of AI and machine learning into various fields. The findings show that IT workers encourage their children to pursue careers with long-term job security and technological relevance, particularly in AI and machine learning. This suggests that parents’ career recommendations are deeply intertwined with the evolving demands of the workforce, with a focus on technology-driven fields. The implications of this study point to the need for greater awareness and understanding of IT career opportunities, emphasising the importance of informed decision-making for students and their families to align with future workforce needs.
Paper Presenters
avatar for Mahle Shabalala

Mahle Shabalala

South Africa
Tuesday February 18, 2025 3:15pm - 3:30pm GMT
Walbrook Suite - 2C America Square Conference Centre, London, United Kingdom

3:15pm GMT

Internet of Things and Artificial Intelligence Powered Crop Suitability Detection System for Sustainable Farming
Tuesday February 18, 2025 3:15pm - 3:30pm GMT
Authors - A S M Ahsanul Sarkar Akib, Abu Zahid Md Jalal Uddin, Fatema Jahan Sifa, Mahadir Islam, Md. Easin Arafat, Touhid Bhuiyan
Abstract - This paper presents an innovative IoT-based autonomous farming system utilizing machine learning models to assist farmers in determining suitable crops based on real-time environmental data. The system integrates IoT sensors, including soil pH, NPK, temperature, and humidity sensors, to collect data from the field. The ESP-8266 NodeMCU processes this data and transmits it to a cloud database. A range of machine learning algorithms were applied to the dataset, including Logistic Regression, Gaussian Naive Bayes, Support Vector Classifier, K-Nearest Neighbors, Decision Tree Classifier, Extra Trees Classifier, Random Forest, Bagging Classifier, Gradient Boosting, and AdaBoost. The highest accuracy was achieved with the Random Forest Classifier (97.05%), followed closely by the Bagging Classifier (96.59%) and Gradient Boosting (96.36%). The AdaBoost model showed poor performance with an accuracy of 10.23%. The system’s predictions are accessible to farmers via a web or mobile application, enabling them to make informed decisions about crop cultivation. This IoT and machine learning-based approach reduces human intervention, optimizes farming practices, and enhances crop yield potential. The system provides real-time crop recommendations, making farming more efficient and sustainable. Use of appropriate algorithms on the sensed data can help in recommendation of suitable crop.
Paper Presenters
avatar for Mahadir Islam

Mahadir Islam

Bangladesh
Tuesday February 18, 2025 3:15pm - 3:30pm GMT
Fleet Suite - 2D America Square Conference Centre, London, United Kingdom

3:15pm GMT

Optimizing Path Planning and Manipulation Strategies for Automated Lettuce Harvesting in Precision Agriculture
Tuesday February 18, 2025 3:15pm - 3:30pm GMT
Authors - Eduardo Velez, Alejandra Cruz, Felipe Coyotl, Humberto Arroyo, Alain Corona, Michelle Carreon
Abstract - The integration of robotics into agriculture has significantly advanced precision farming practices by reducing labor costs associated with repetitive tasks. This paper presents a comprehensive approach to optimize path planning and manipulation for agricultural robots involved in lettuce harvesting. We explore modifications to the A* algorithm for efficient navigation in unstructured agricultural environments, implement trajectory smoothing techniques for enhanced control, and develop inverse kinematics solutions for precise manipulation of the robotic arm. The proposed methods address the challenges of navigating between crop rows, avoiding obstacles, and ensuring accurate positioning of the end-effector for a successful harvest.
Paper Presenters
Tuesday February 18, 2025 3:15pm - 3:30pm GMT
Bishopsgate Suite - 2A America Square Conference Centre, London, United Kingdom

3:15pm GMT

Simulation of Distributed Sensing Applications: Tradeoff between Accuracy and Simulation Time
Tuesday February 18, 2025 3:15pm - 3:30pm GMT
Authors - Sebastian Kiunke, Lars Wischhof
Abstract - Direct communication between mobile devices enables a wide range of distributed sensing applications, e.g. environmental monitoring or the generation of decentralized pedestrian density maps. In many cases, data generated by these distributed sensing applications is evaluated by artificial intelligence (AI), for example, to predict critical situations in the future and react before these occur. However, training AI models that can be used for this task requires a large amount of data. Detailed discrete event simulations of relevant situations, such as crowded areas, are time-consuming, particularly in the case of many communicating sensors. In this paper, the application layer within the network simulation is subset by two less complex communication models to reduce the simulation time. To evaluate if the simplified modelling leads to significantly different simulation results, a typical example application is evaluated. It creates a local pedestrian density map based on direct communication. Initial results confirm that the detailed 4G/5G communication model can be replaced by a simpler model to reduce the required simulation time by up to 56% in specific scenarios. However, one of the two evaluated example scenarios also leads to a significant underestimation of the mean square error of the sensed data values.
Paper Presenters
Tuesday February 18, 2025 3:15pm - 3:30pm GMT
Newgate Suite - 2B America Square Conference Centre, London, United Kingdom

3:15pm GMT

Statistical Feature Extraction for Stock Price Prediction Machine Learning-based Model for Indonesia's Five Leading LQ45 Companies
Tuesday February 18, 2025 3:15pm - 3:30pm GMT
Authors - Lili Ayu Wulandhari , Aditya Kurniawan, Nathania Christy Nugraha, Natasha Hartanti Winata
Abstract - The stock market, as a fundamental component of a nation's economic structure, profoundly impacts the course of economic progress. The stock market's performance can influence foreign investment and the growth of the real sector. Stock fluctuations are essential for providing valuable insights to market participants and investors, allowing them to develop strategies that foster growth and macroeconomic stability. Nonetheless, precisely forecasting stock values is challenging. This work investigates statistical feature extraction for stock price prediction utilizing machine learning approaches on Indonesia's leading five LQ45 companies: BBCA, ASII, BBRI, BMRI, and TLKM. Daily stock price data from 2019 to 2024 is employed, emphasizing statistical characteristics such as mean, standard deviation, skewness, kurtosis, and interquartile range. The features are examined utilizing decision trees, random forests, and multilayer perceptrons (MLPs) with hyperparameter optimization. The MLP model demonstrates superior accuracy, achieving an average 𝑅2 𝑆𝑐𝑜𝑟𝑒 of 0.95 and a MAE that is 92.52% lower than the standard deviation of the actual stock price. The results indicate the effectiveness of statistical feature-based machine learning for accurate stock price prediction, implying possible uses in financial decision-making and market analysis.
Paper Presenters
Tuesday February 18, 2025 3:15pm - 3:30pm GMT
Aldgate Suite - 2E America Square Conference Centre, London, United Kingdom

3:30pm GMT

Convolutional Neural Network Based Animal Classification: A Comparative Study of Custom Architecture VGG16 and ALexNet
Tuesday February 18, 2025 3:30pm - 3:45pm GMT
Authors - Kanda Tshinu Patrick, Chunling Tu, Owolawi Pius Adewale, Antonie Smith
Abstract - This paper presents a comparative study for animal classification using Convolutional Neural Networks (CNNs), specifically based on the VGG16, AlexNet, and a custom CNN architecture. Traditional methods for classifying animals rely heavily on human visual ability, which is time-consuming, labor-intensive, and prone to inconsistencies that can compromise the accuracy of species identification. In contrast, CNN-based techniques leverages automated features extraction. Primarily focusing on body and facial features, to deliver more consistent and reliable classification outcomes. The fields of computer vision and image processing have gained significant attention due to their effectiveness in addressing classification challenges across domains such as agriculture, wildlife conservation, and biodiversity research. The development of CNNs has become a critical tool in these areas, enabling automated systems to monitor livestock, track animal behaviour, and detect wildlife, enhancing both animal management and conservation efforts. In this study, three CNN architectures—VGG16, AlexNet, and a custom CNN—were trained on a dataset comprising 5,400 images of animals across 90 classes. The results show that VGG16 achieved the highest classification accuracy of 91.51%, followed by the custom CNN with 84.57%, and AlexNet with 79.02%. These findings demonstrate the potential of deep learning for accurate species identification. Furthermore, the use of pre-trained models like VGG16 can enhance classification performance, while custom models can provide competitive results with fewer computational resources. This study highlights the effectiveness of CNNs in animal classification and underscores their potential for discovering new observations, including the identification of previously undocumented species within the same class.
Paper Presenters
Tuesday February 18, 2025 3:30pm - 3:45pm GMT
Bishopsgate Suite - 2A America Square Conference Centre, London, United Kingdom

3:30pm GMT

Drone-based Tomato Fruit Detection through Hardware-Accelerated YOLO Deployment
Tuesday February 18, 2025 3:30pm - 3:45pm GMT
Authors - Abdellah Islam Kafi, Antonio P. Sanfilippo, Raka Jovanovic, Sa’d Abdel-Halim Shannak
Abstract - In this paper, we develop a drone-based solution for detecting productivity characteristics of tomato crops inside agricultural greenhouses using the YOLO8 computer vision model; a mobile phone is used to deploy the trained model. The implementation leverages the Apple Neural Engine (NE), a hardware accelerator module embedded in recent Apple mobile phones, to enable fast and efficient inference. Our video acquisition component also employs a DJI remote controller that streams live video from the drone to the mobile app for processing. The main objective is to perform rapid and precise detection of tomatoes within greenhouses, where drones can improve efficiency and coverage. We describe the model architecture and various optimization techniques suitable for embedded-platform deployment. The experimental study demonstrates the system’s effectiveness in detection accuracy and inference time when utilizing NE compared to CPU-based inference. We also compare accuracy, model size, and inference speed across variants of the YOLO algorithm.
Paper Presenters
Tuesday February 18, 2025 3:30pm - 3:45pm GMT
Aldgate Suite - 2E America Square Conference Centre, London, United Kingdom

3:30pm GMT

IoT-Enabled Smart System for Real-Time Alerts and Management of Sandstorms and Landslides
Tuesday February 18, 2025 3:30pm - 3:45pm GMT
Authors - Thirupathi Regula, Warda Al Hoqani, Sunitha Cheriyan, Sharmila K. Reddy, Naveen Kumar, Shazia Tazeen, Kiran Kumar S. G
Abstract - Natural disasters, driven by changes in climate and topography, pose significant risks to human life and economic stability. Events such as earthquakes, landslides, tsunamis, and cyclones result in substantial ecological damage and loss of life. With climate change accelerating, these disasters are becoming increasingly unpredictable, particularly in vulnerable regions like forests and deserts. This study introduces an IoT-enabled smart system designed to provide real-time alerts and manage sandstorms and landslides more effectively. The system integrates IoT technologies with automated alert mechanisms to deliver timely warnings via mobile devices. It employs various sensors, including accelerometers and inclinometers to monitor ground movement for landslide detection, and particulate matter (PM) sensors, anemometers, and humidity sensors to detect sandstorm conditions. Utilizing Geographic Information System (GIS) and Global Positioning System (GPS) technologies, the system provides real-time updates and precise location data. Enhanced communication and situational awareness enable efficient emergency response and resource deployment. This innovative approach aims to improve survival rates, facilitate faster rescue operations, and strengthen disaster preparedness, particularly in remote, disaster-prone areas.
Paper Presenters
Tuesday February 18, 2025 3:30pm - 3:45pm GMT
Walbrook Suite - 2C America Square Conference Centre, London, United Kingdom

3:30pm GMT

The Sustainable Business Models Architectural Design in the Frame of Industry 4.0
Tuesday February 18, 2025 3:30pm - 3:45pm GMT
Authors - Pavel Malyzhenkov, Maurizio Masi, Fabrizio Rossi
Abstract - the development of the Internet and other Industry 4.0 enabling technologies has primarily led to the acceleration of all processes and an increase in the volume of required information. As a result it gives a significant boost to the development of both businesses and society as a whole, while the assessment of its economic and social impact varies considerably. This is why the development of Industry 4.0 technologies is directly linked to the development of sustainable development strategies which must be incorporated in the enterprise architecture design.
Paper Presenters
Tuesday February 18, 2025 3:30pm - 3:45pm GMT
Newgate Suite - 2B America Square Conference Centre, London, United Kingdom

3:30pm GMT

Unraveling Jingle-Jangle Fallacies in Digital Assistant Technologies: A Comprehensive Systematic Review and Research Agenda
Tuesday February 18, 2025 3:30pm - 3:45pm GMT
Authors - Niklas Preiss, Markus Westner
Abstract - Digital assistant technologies (DATs) such as chatbots, virtual assistants, and intelligent agents have gained widespread attention, yet inconsistent terminology remains a critical challenge. The fragmented nature of previous research has led to significant confusion due to overlapping and interchangeable use of terms across industries. This systematic literature review, following the PRISMA protocol, consolidates the current state of knowledge on DATs and addresses the prevalent jingle-jangle fallacies in their terminology. Analysis of 137 articles identified key characteristics, applications, and conceptual overlaps of various DATs, uncovering 39 distinct technologies categorized under three overarching concepts: assistants, chatbots, and agents. Despite shared functionalities, terminological inconsistencies persist across different sectors, presenting challenges for both academic research and practical implementation. This review emphasizes the need for standardized terminology and clearer classification frameworks to facilitate broader DAT adoption across organizational contexts.
Paper Presenters
Tuesday February 18, 2025 3:30pm - 3:45pm GMT
Fleet Suite - 2D America Square Conference Centre, London, United Kingdom

3:45pm GMT

Acceleration Methods for Finding Measurement Points for Testing Power TSVs in Stacked 3D-IC
Tuesday February 18, 2025 3:45pm - 4:00pm GMT
Authors - Koutaro Hachiya
Abstract - As a method for testing power TSVs (Through Silicon Vias) in 3D-ICs, prior studies have proposed detecting open defects by measuring the re-sistance between power pads placed directly beneath the TSVs. However, opti-mizing the resistance measurement points and deriving the defect coverage for this test require repeated circuit simulations to calculate the resistance between power pads, which is time-consuming. To accelerate this process, this paper proposes a method to estimate defect coverage using sampling and optimize measurement points through Bayesian optimization. Numerical experiments demonstrated that the time required for defect coverage estimation was acceler-ated by a factor of 10 compared to methods without sampling. Additionally, the time needed to optimize measurement points was reduced by approximately 1.6 times compared to the conventional Exhaustive Neighborhood Search method when the approximate locations of the optimal measurement terminals were unknown.
Paper Presenters
Tuesday February 18, 2025 3:45pm - 4:00pm GMT
Newgate Suite - 2B America Square Conference Centre, London, United Kingdom

3:45pm GMT

Selection and prioritizing Quality of Services Based on Qualitative and Quantitative Approach
Tuesday February 18, 2025 3:45pm - 4:00pm GMT
Authors - Mamoun Ghaleb Awad, Ibrahim Mohammed Dweib
Abstract - As governments worldwide increasingly transition towards digital platforms to enhance service delivery and citizen engagement, the selection of appropriate e-government services becomes a critical aspect of effective governance. This research provides an in-depth analysis and framework for service selection in e-government, addressing the challenges and complexities inherent in this crucial decision-making process. By integrating theoretical perspectives with empirical evidence, the study offers a comprehensive understanding of the factors affecting service selection, thereby offering valuable insights for policymakers, practitioners, and researchers in the field of e-governance. The research aims to develop a technological framework that emphasizes the curation and improvement of high-quality services within the e-government context, ultimately enhancing service delivery. A mixed-methods approach is employed, combining qualitative (survey) and quantitative (mathematical metrics) methodologies to evaluate the quality of e-government services. This methodology systematically organizes and classifies various services according to their significance and demand, culminating in effective service identification and selection. The paper details the essential activities of domain identification and service selection, providing clarity on the complex process of evaluating service quality within the e-government framework.
Paper Presenters
Tuesday February 18, 2025 3:45pm - 4:00pm GMT
Bishopsgate Suite - 2A America Square Conference Centre, London, United Kingdom

3:45pm GMT

Sensor Data Synchronization based on Estimation of Commonly Detected Events in Wireless Sensor Networks
Tuesday February 18, 2025 3:45pm - 4:00pm GMT
Authors - Katsuhiro Nagano, Hiroaki Higaki
Abstract - In a wireless sensor network, sensor nodes transmit sensor data with information about detected events including local clock values at times when occurrences of the events are detected to a fusion center. The sensor data is stored in a database and analyzed. Since local clocks in wireless sensor nodes are usually not synchronized precisely due to unexpectable transmission delay of control messages for clock synchronization which requires high communication overhead, this paper proposes sensor data synchronization which adjust the local clock values associated to stored sensor data. For local clock value adjustment, this paper proposes a novel method based on estimation of relative skew and offset between local clocks in neighbor wireless sensor node whose observable areas are overlapped. Here, estimation of commonly detected events by the wireless sensor nodes is a key technique. By our proposed method, with no additional communication overhead, local clock values are consistently adjusted to analyze their temporal relations such as precedence ones.
Paper Presenters
Tuesday February 18, 2025 3:45pm - 4:00pm GMT
Walbrook Suite - 2C America Square Conference Centre, London, United Kingdom
 

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