Smart City Gnosys

Smart city article details

Title Dynamic Resource Management Of Green Fog Computing For Iot Support
ID_Doc 21375
Authors Moh M.; Moh T.-S.; Surmenok M.
Year 2022
Published 2022 International Conference on Green Energy, Computing and Sustainable Technology, GECOST 2022
DOI http://dx.doi.org/10.1109/GECOST55694.2022.10010417
Abstract The internet of things (IoT) is an integrated part of contemporary life. It includes wearable devices, such as smartwatches and cell phones, and sensors for smart cities. Fog computing can improve the support of IoT devices by allowing these devices to offloading their collected data and other tasks to the fog nodes. To build a green fog computing system, it is important to have fog nodes near the IoT devices for faster data offload; this in turn would increase energy efficiency for both the IoT devices and the fog nodes. This paper considers dynamic, on-demand, peer-to-peer fog formation using volunteering nodes. We propose multiple modifications of the Memetic Algorithm (MA) to find the best service placement from IoT to fog nodes dynamically. optimized placements are calculated in terms of task completion delay and task completion rate. We further apply a local-search heuristics and introduce additional fitness functions to provide prioritized services. Together they improve energy efficiency, service quality, and system throughput. Finally, applying a machine learning method in the last step of the placement algorithm enables the system to find the best solution from a set of Pareto optimal results. We believe this is an important work that would contribute significantly to the research of emerging green computing systems. © 2022 IEEE.
Author Keywords Fog Computing; Fog-Cloud Architecture; IoT; Machine Learning.; Memetic Algorithm; Mobile Cloud Computing; Resource Management


Similar Articles


Id Similarity Authors Title Published
26780 View0.887Apat H.K.; Goswami V.; Sahoo B.; Barik R.K.; Saikia M.J.Fog Service Placement Optimization: A Survey Of State-Of-The-Art Strategies And TechniquesComputers, 14, 3 (2025)
4182 View0.879Kumar S.; Singh P.; Singh A.A Review Of Optimized Computational Strategies For Iot: Cloud, Fog, And Edge Computing ApproachesProceedings of 5th International Conference on Pervasive Computing and Social Networking, ICPCSN 2025 (2025)
40898 View0.878Negi V.; Joshi D.; Sharma A.Optimizing Task Allocation In Fog-Based Iot For Smart City SolutionsCitizen-Centric Artificial Intelligence for Smart Cities (2025)
4114 View0.877Mahdi R.M.; Hassan H.J.; Abdulsaheb G.M.A Review Load Balancing Algorithms In Fog ComputingBIO Web of Conferences, 97 (2024)
44748 View0.874Ghaleb Abdkhaleq M.H.; Zamanifar K.Reduce Energy Consumption By Intelligent Decision-Making In A Fog-Cloud EnvironmentWireless Personal Communications (2023)
40900 View0.871Rahmani A.M.; Haider A.; Khoshvaght P.; Gharehchopogh F.S.; Moghaddasi K.; Rajabi S.; Hosseinzadeh M.Optimizing Task Offloading With Metaheuristic Algorithms Across Cloud, Fog, And Edge Computing Networks: A Comprehensive Survey And State-Of-The-Art SchemesSustainable Computing: Informatics and Systems, 45 (2025)
20717 View0.868Shaik S.; Baskiyar S.Distributed Service Placement In Hierarchical Fog EnvironmentsSustainable Computing: Informatics and Systems, 34 (2022)
570 View0.868Belli D.; Chessa S.; Kantarci B.; Foschini L.A Capacity-Aware User Recruitment Framework For Fog-Based Mobile Crowd-Sensing PlatformsProceedings - IEEE Symposium on Computers and Communications, 2019-June (2019)
20796 View0.867Pramono L.H.; Shen S.-H.Dmda: A Computational Resource Allocation Approach For Iot Devices In Fog Computing2024 International Conference on Intelligent Cybernetics Technology and Applications, ICICyTA 2024 (2024)
23259 View0.865Fereira R.J.; Ranaweera C.; Lee K.; Schneider J.-G.Energy Efficient Resource Management For Real-Time Iot ApplicationsInternet of Things (The Netherlands), 30 (2025)