Smart City Gnosys

Smart city article details

Title Economic Analysis Of Smart City Infrastructure Upgrades For Sustainable Development Modeling In Digital Twin: Hybrid Fog Technique To Improve System Reliability
ID_Doc 21664
Authors Chen S.; Hu X.
Year 2024
Published Sustainable Energy Technologies and Assessments, 67
DOI http://dx.doi.org/10.1016/j.seta.2024.103786
Abstract Fog computing would be an evolving idea extending the conventional cloud computing via taking advantage of the sources located on the sites of consumers in order to provide more effective services. Most real-time applications prefer it for its benefits, including lower operating prices and reduced network delay, and enhanced security. Resource allocation (RA) and planning are difficult tasks because of the heterogeneity of fog devices. A MA (MA) algorithm named the crow search algorithm (CSA) is used in the current study to meet RA and planning in fog computing environments. The suggested model focuses on 2 purposes: the achievement rate and the security hit rate. It is essential to maximize both purposes. A local search layout has been used for enhancing the efficiency of the CSA. RA and planning in fog environments are solved using the metaheuristic method. Based on the digital twin model simulations, the efficiency of the developed algorithm is compared to the current methods and demonstrates that the developed algorithms achieve the outlined purposes more efficiently. © 2024
Author Keywords Digital twin; Fog computing; RA; Secure scheduling; Smart grid


Similar Articles


Id Similarity Authors Title Published
2542 View0.899Aranguren I.; Fausto F.; González A.; L-Aguiñaga A.A Metaheuristic Task Scheduling Of Fog Servers Using A Hybridization Of Crow Search Algorithm With Non-Monopolize SearchStudies in Computational Intelligence, 806 (2025)
2379 View0.871De Queiroz T.A.; Canali C.; Iori M.; Lancellotti R.A Location-Allocation Model For Fog Computing InfrastructuresCLOSER 2020 - Proceedings of the 10th International Conference on Cloud Computing and Services Science (2020)
40898 View0.863Negi V.; Joshi D.; Sharma A.Optimizing Task Allocation In Fog-Based Iot For Smart City SolutionsCitizen-Centric Artificial Intelligence for Smart Cities (2025)
30492 View0.859Sharma N.; Sharma D.Implementation And Analysis Of Fog Node-Assisted Scheduling And Optimization Of Resource Allocation And UtilizationInternational Journal of Computer Networks and Applications, 11, 6 (2024)
26780 View0.858Apat 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)
1711 View0.856Canali C.; Lancellotti R.A Fog Computing Service Placement For Smart Cities Based On Genetic AlgorithmsCLOSER 2019 - Proceedings of the 9th International Conference on Cloud Computing and Services Science (2019)
26767 View0.854Gokulkannan S.; Kiranshankar S.; Kishore S.; Lanitha B.Fog Environment For Smart Cities With Multi-Level Resource Sharing FrameworkProceedings of the 2023 2nd International Conference on Electronics and Renewable Systems, ICEARS 2023 (2023)
20796 View0.853Pramono 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)
4499 View0.853Dubey K.; Sharma S.C.; Kumar M.A Secure Iot Applications Allocation Framework For Integrated Fog-Cloud EnvironmentJournal of Grid Computing, 20, 1 (2022)
38337 View0.851Dalvand F.M.; Zamanifar K.Multi-Objective Service Provisioning In Fog: A Trade-Off Between Delay And Cost Using Goal ProgrammingICEE 2019 - 27th Iranian Conference on Electrical Engineering (2019)