Fog Computing Task Scheduling with Energy Consciousness for the Industrial Internet of Things

Background: The Industrial Internet of Things (IIoT) has revolutionized operations for businesses, and fog computing is a valuable resource management and job scheduling tool that has facilitated the transformation. In this regard, efficient resource usage will be more useful for the performance and...

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Bibliographic Details
Published in:Proceedings of the XXth Conference of Open Innovations Association FRUCT Vol. 36; no. 1; pp. 239 - 248
Main Authors: Hamdoun, Subhi Hammadi, Muhemed Mool, Mehdi, Mohammed Al-Ani, Azhar Raheem, Kamil Shnain, Saif, Jaber Almaaly, Abdul Mohsen, Butsenko, Yurij, Majeed, Mohammed Abdul
Format: Conference Proceeding Journal Article
Language:English
Published: FRUCT Oy 01-11-2024
FRUCT
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Summary:Background: The Industrial Internet of Things (IIoT) has revolutionized operations for businesses, and fog computing is a valuable resource management and job scheduling tool that has facilitated the transformation. In this regard, efficient resource usage will be more useful for the performance and energy cost-saving limit of IIoT system.Objective: The article proposed a new energy-aware metaheuristic approach to enhancing the performance and efficiency of IIoT systems in fog computing environments. The study aims to come up with a methodology that strikes a balance between efficiency in compute requirements and energy consumption.Methodology: A meta-heuristic method inspired by natural processes such as genetic algorithms and simulated annealing is applied to optimize the selection of which jobs should be scheduled. This approach takes into account several parameters like when the job is needed, availability of resources, and usage patterns to efficiently schedule jobs across the network.Results: The results show that the proposed approach drastically improves energy efficiency and system performance. In this paper, the fog orchestration master intends to divide the workload between fog and cloud in an excellent manner and resolve specific Issues of fog computing in IIoT environment. This manages to keep energy usage low and the operating efficiency high.Conclusions: Metaheuristic optimization techniques integrate into fog computing environments for IIoT job schedule complexity. This methodology enhances the sustainability of IIoT operations, and their ability to meet robust performance requirements over time. Our findings provide the crucial insight needed to enable industries that need seamless IIoT integration and plan further research in the field of energy-efficient fog computing.
ISSN:2305-7254
2305-7254
2343-0737
DOI:10.23919/FRUCT64283.2024.10749894