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Far East Journal of Electronics and Communications

📢 Latest Update: New special issue call for papers on "Emerging Technologies in Research" - Submit by March 31, 2025

📢 Latest Update: New special issue call for papers on "Emerging Technologies in Research" - Submit by March 31, 2025

August 5, 2025

Volume 29, Issue 1 - $2025

Volume 29 Issue 1 Cover

Issue Details:

Volume 29 Issue 1
Published:Invalid Date

Editorial: August 5, 2025

Welcome to the 2025 issue of Far East Journal of Electronics and Communications. This issue showcases the remarkable breadth and depth of contemporary research across multiple disciplines. From cutting-edge applications of machine learning in climate science to the revolutionary potential of quantum computing in drug discovery, our featured articles demonstrate the power of interdisciplinary collaboration in addressing global challenges.

We are particularly excited to present research that bridges traditional academic boundaries, reflecting our journal's commitment to fostering innovation through cross-disciplinary dialogue. The integration of artificial intelligence with environmental science, the application of blockchain technology to supply chain management, and the convergence of urban planning with smart city technologies exemplify the transformative potential of collaborative research.

As we continue to navigate an era of rapid technological advancement and global challenges, the research presented in this issue offers both insights and solutions that will shape our future. We thank our authors, reviewers, and editorial board members for their continued dedication to advancing knowledge and promoting scientific excellence.

Professor Bal S. Virdee
Editor-in-Chief
Far East Journal of Electronics and Communications

Articles in This Issue

Showing 2 of 2 articles
Research PaperID: FJEC1290010

Artificial Intelligence - Driven anomaly detection in energy systems

Chidi Ukamaka Betrand, Chinwe Gilean Onukwugha, Nneka Martina Oragba, Douglas Allswell Kelechi, Ihechiluru Chinwe Ugbor

Enormous amounts of data are being produced everyday by sub-meters and smart sensors installed in residential buildings. If leveraged properly, that data could assist end-users, energy producers and utility companies in detecting anomalous power consumption and understanding the causes of each anomaly. This research focuses on the use of AI for anomaly detection in energy systems, specifically targeting Central Processing Unit (CPU) and Graphic Processing Unit (GPU) overheating in energy systems. With the increasing complexity and reliance on energy-consuming devices, overheating can significantly affect system performance and energy efficiency. This research proposes an artificial intelligence driven model integrated into the task scheduler of a system to monitor CPU and GPU temperature levels. When abnormal temperature thresholds are detected, the system promptly alerts the user, preventing potential damage and ensuring optimal performance. The methodology follows a structured approach which is the Cross-Industry Standard Process for Data Mining (CRISP-DM) framework, using Python programming and leveraging task scheduling for real-time monitoring. The results highlight the model’s accuracy in detecting anomalies, providing timely alerts, and preventing overheating events. The anomaly detection system improves energy management by identifying potential risks before they escalate, demonstrating its ability to optimize system efficiency, reduce energy waste, and improve decision-making regarding system and sustainability. Received: June 25, 2025 Accepted: July 23, 2025  DOI: https://doi.org/10.17654/0973700625001

emissionanomaly detectionenergy systemartificial intelligencetemprature
3,274 views
1,065 downloads

Contributors:

 Chidi Ukamaka Betrand
,
 Chinwe Gilean Onukwugha
,
 Nneka Martina Oragba
,
 Douglas Allswell Kelechi
,
 Ihechiluru Chinwe Ugbor
Research PaperID: FJEC1290011

Gamification and adaptive gamification in MOOCs: A systematic literature review

A. Papadimitriou

The purpose of this study is to present current research on gamification in MOOCs. These approaches aim to enhance the effectiveness of MOOCs by addressing challenges such as low completion rates, high dropout rates, low participant engagement, feelings of isolation, motivational issues, inadequate collaboration among participants, etc. To address the problem, rigorous papers were collected on gamification and adaptive gamification in MOOCs. The findings were categorized based on each paper’s specific challenges, providing valuable insights for researchers and MOOC designers in creating new courses for further study. The analysis indicated that both gamified and adaptive gamified MOOCs can have a positive impact on distance education. The incorporation of gamification elements into these courses significantly enhances their effectiveness by overcoming the limitations associated with traditional MOOCs. Distance education can offer an improved learning experience by implementing gamification and adaptive gamification. This review aims to assist researchers and practitioners involved in gamified and adaptive gamified MOOCs in avoiding or minimizing these challenges and managing them systematically. Additionally, it emphasizes the significance of gamification in enhancing the effectiveness of MOOCs. Received: July 7, 2025 Accepted: July 23, 2025 DOI: https://doi.org/10.17654/0973700625002

MOOCsdistance educationgamificationadaptive gamification
3,245 views
981 downloads

Contributors:

 A. Papadimitriou