Smart City Gnosys

Smart city article details

Title A Cloud And Fog Based Architecture For Energy Management Of Smart City By Using Meta-Heuristic Techniques
ID_Doc 647
Authors Butt A.A.; Khan S.; Ashfaq T.; Javaid S.; Sattar N.A.; Javaid N.
Year 2019
Published 2019 15th International Wireless Communications and Mobile Computing Conference, IWCMC 2019
DOI http://dx.doi.org/10.1109/IWCMC.2019.8766702
Abstract Cloud servers provide services over the internet by using Virtual Machines (VMs). The power consumption of Physical Machines (PMs) needs to be considered, as VMs are running on physical machines. When a consumer sends request to the cloud, it takes time to respond because of distant location of cloud. Due to which delay and latency issue arises. Fog is introduced to overcome the peculiarities of cloud. In fog computing environment, the operational challenges for the research community are: reducing the energy consumption and load balancing. The energy consumption of the fog resources depends on the requests that are allocated to the set of VMs. This is a challenging task. In this paper, three layered architecture cloud, fog and consumer layer are proposed. The cloud and fog provide VMs to run the consumers' application quickly. The meta-heuristic algorithm that is: Genetic Algorithm (GA) is proposed and Binary Particle Swarm Optimization (BPSO) is implemented to balance the set of requests on VMs of cloud and fog. The proposed and implemented algorithm is compared with existing PSO and BAT algorithms to measure efficiency. The Closest Data Center (CDC), Optimize Response Time (ORT), Reconfigure Dynamically with Load (RDL) is implemented to optimize the Response Time (RT) and Processing Time (PT). These policies also decide which requests are allocated to which Data Center (DC). The proposed GA and implemented BPSO are use to minimize the computational cost and also decrease the RT and PT of DCs. © 2019 IEEE.
Author Keywords Cloud; Fog; Load Balancing; Server Broker Policies; Smart City; Smart Grid


Similar Articles


Id Similarity Authors Title Published
18375 View0.889Maiti P.; Apat H.K.; Kumar A.; Sahoo B.; Turuk A.K.Deployment Of Multi-Tier Fog Computing System For Iot Services In Smart CityInternational Symposium on Advanced Networks and Telecommunication Systems, ANTS, 2019-December (2019)
1711 View0.888Canali 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)
4086 View0.888Choudhury S.; Luhach A.K.; Rodrigues J.J.P.C.; AL-Numay M.; Ghosh U.; Sinha Roy D.A Residual Resource Fitness-Based Genetic Algorithm For A Fog-Level Virtual Machine Placement For Green Smart City ServicesSustainability (Switzerland), 15, 11 (2023)
2542 View0.886Aranguren 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)
34395 View0.885Jafari V.; Rezvani M.H.Joint Optimization Of Energy Consumption And Time Delay In Iot-Fog-Cloud Computing Environments Using Nsga-Ii Metaheuristic AlgorithmJournal of Ambient Intelligence and Humanized Computing, 14, 3 (2023)
4499 View0.881Dubey K.; Sharma S.C.; Kumar M.A Secure Iot Applications Allocation Framework For Integrated Fog-Cloud EnvironmentJournal of Grid Computing, 20, 1 (2022)
40898 View0.881Negi V.; Joshi D.; Sharma A.Optimizing Task Allocation In Fog-Based Iot For Smart City SolutionsCitizen-Centric Artificial Intelligence for Smart Cities (2025)
40757 View0.88Jayasena K.P.N.; Thisarasinghe B.S.Optimized Task Scheduling On Fog Computing Environment Using Meta Heuristic AlgorithmsProceedings - 4th IEEE International Conference on Smart Cloud, SmartCloud 2019 and 3rd International Symposium on Reinforcement Learning, ISRL 2019 (2019)
14378 View0.879Javaid N.; Butt A.A.; Latif K.; Rehman A.Cloud And Fog Based Integrated Environment For Load Balancing Using Cuckoo Levy Distribution And Flower Pollination For Smart Homes2019 International Conference on Computer and Information Sciences, ICCIS 2019 (2019)
58133 View0.878Reddy K.H.K.; Luhach A.K.; Kumar V.V.; Pratihar S.; Kumar D.; Roy D.S.Towards Energy Efficient Smart City Services: A Software Defined Resource Management Scheme For Data CentersSustainable Computing: Informatics and Systems, 35 (2022)