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Eliel Keelson

Computer Engineering

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About

Eliel Keelson, Ph.D., is a Lecturer with the Department of Computer Engineering at the Kwame Nkrumah University of Science and Technology, Ghana. He has a PhD. in Computer Engineering and his areas of research include Intelligent Energy Systems, Internet of Things and Blockchain Technologies.

Research Summary

(inferred from publications by AI)

The researcher's comprehensive work spans multiple subfields within the Physical Sciences, encompassing areas such as Blockchain Technology Applications and Security, Smart Grid Energy Management, Software-Defined Networks and 5G, ICT in Developing Communities, E-Government and Public Services, Emotion and Mood Recognition, Educational Technology and Assessment, Consumer Retail Behavior Studies, Oil Palm Production and Sustainability, Food Supply Chain Traceability, and Network Security and Intrusion Detection. These diverse areas demonstrate a cohesive research focus on technological innovations, optimization techniques, system efficiency improvements, security enhancements, and behavioral studies across various applications.

Research Themes

All Papers

On Blockchain and IoT Integration Platforms: Current Implementation Challenges and Future Perspectives(2021)
Blockchain interoperability: the state of heterogenous blockchain‐to‐blockchain communication(2023)
Assessing blockchain and IoT technologies for agricultural food supply chains in Africa: A feasibility analysis(2024)
Adaptive Storage Optimization Scheme for Blockchain-IIoT Applications Using Deep Reinforcement Learning(2022)
A Survey on Network Optimization Techniques for Blockchain Systems(2022)
An Overview of Technologies for Improving Storage Efficiency in Blockchain-Based IIoT Applications(2022)
Optimising peer-to-peer topology for blockchain-based industrial internet of things networks using particle swarm optimisation(2025)
A storage-efficient learned indexing for blockchain systems using a sliding window search enhanced online gradient descent(2024)
Optimizing Blockchain Querying: A Comprehensive Review of Techniques, Challenges, and Future Directions(2024)
A Framework for Full Decentralization in Blockchain Interoperability(2024)
A Smart Retrofitted Meter for Developing Countries(2014)
A Smart Quota System for Rationing Power in African Developing Countries(2014)
Software-Defined Networks for Optical Networks Using Flexible Orchestration: Advances, Challenges, and Opportunities(2022)
Software-Defined Networks for Optical Networks using Flexible Orchestration : Advances, Challenges and Opportunities(2022)
Mobile Phone Usage Among Senior High and Technical School Students in Ghana and Its Impact on Academic Outcomes – A Case Study(2019)
e-Government Services in Ghana — Current State and Future Perspective(2017)
A Survey on Deep Learning Algorithms in Facial Emotion Detection and Recognition(2022)
A Survey on Deep Learning Algorithms in Facial Emotion Detection and Recognition(2022)
Automatic Multiple Choice Examination Questions Marking and Grade Generator Software(2022)
A Supermarket Anti-Theft RFID Scanner : digiSCAN(2022)
A Supermarket Anti-Theft Scanner : digiSCAN(2022)
AfroPALM - Afrocentric palm oil adulteration learning models: An end-to-end deep learning approach for detection of palm oil adulteration(2024)
Afropalm - Afrocentric Palm Oil Adulteration Learning Models: An End-to-End Deep Learning Approach for Detection of Palm Oil Adulteration in West Africa(2024)
An Open and Fully Decentralised Platform for Safe Food Traceability(2022)
CDBi‐LSTM: A Hybrid Deep Learning Model With Attention‐Based Fusion for Efficient DDoS Detection in IoT Environments(2025)

Collaboration Network

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About This Profile

This profile is generated from publicly available publication metadata and is intended for research discovery purposes. Themes, summaries, and trajectories are inferred computationally and may not capture the full scope of the lecturer's work. For authoritative information, please refer to the official KNUST profile.