Smart City Gnosys

Smart city article details

Title Iot Service Placement Architecture For Edge Computing In Smart Cities
ID_Doc 33903
Authors Ramya K.C.; Kavitha V.R.; Geetha R.; Sivaranjani S.; Tiwari R.
Year 2022
Published AIP Conference Proceedings, 2527
DOI http://dx.doi.org/10.1063/5.0108176
Abstract Improved quality of service is provided by the Internet of Things (IoT) devices deployed over IoT networks that form a large part of the smart city environment. At the network's edges, IoT devices are provided with computing abilities through a suitable and powerful paradigm termed as edge computing, which makes significant contributions to the distributed and large scale IoT network features. For the purpose of execution, in edge computing, edge computing units (ECUs) host the IoT services lessening the burden of bandwidth while providing low latency. Improving the overall execution performance of an ECU in terms of power consumption, load balance level and resource utilization is challenging. However, these parameters are essential in the service placement of IoT devices to ensure leakage of privacy information. A trust-oriented IoT service placement (TSP) scheme is presented in this paper to tackle the aforementioned challenges during edge computing in the IoT networks of the smart city environments. The privacy preservation and execution performance metrics tradeoffs are balanced by the placement strategies by enhancing the strength Pareto evolutionary algorithm. Out of the several placement strategies obtained, the optimal strategy is identified using multicriteria decision making and technique for order preference by similarity to ideal solution schemes. Further, the TSP is evaluated in terms of its reliability and efficiency through systematic experiments. © 2022 Author(s).
Author Keywords


Similar Articles


Id Similarity Authors Title Published
26780 View0.877Apat 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)
20630 View0.876Mahmood O.A.; Abdellah A.R.; Muthanna A.; Koucheryavy A.Distributed Edge Computing For Resource Allocation In Smart Cities Based On The IotInformation (Switzerland), 13, 7 (2022)
21400 View0.871Kazmi A.H.; Staffolani A.; Zhang T.; Cabrera C.; Clarke S.Dynamic Service Placement In Edge Computing: A Comparative Evaluation Of Nature-Inspired AlgorithmsIEEE Access, 13 (2025)
5342 View0.868Yu W.; Liang F.; He X.; Hatcher W.G.; Lu C.; Lin J.; Yang X.A Survey On The Edge Computing For The Internet Of ThingsIEEE Access, 6 (2017)
8870 View0.868de Queiroz T.A.; Canali C.; Iori M.; Lancellotti R.An Optimization View To The Design Of Edge Computing Infrastructures For Iot ApplicationsInternet of Things (2022)
22047 View0.863Sivakumar S.; Abraham M.; Babu J.J.; Perumal V.; Polepaka S.; Senthilkumar C.Effective And Secure Task Offloading In Iot Edge Computing Through A Multi-Feedback Trust MechanismProceedings of the 2nd International Conference on Applied Artificial Intelligence and Computing, ICAAIC 2023 (2023)
4182 View0.863Kumar 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)
34793 View0.862Sfaxi H.; Lahyani I.; Yangui S.; Torjmen M.Latency-Aware And Proactive Service Placement For Edge ComputingIEEE Transactions on Network and Service Management, 21, 4 (2024)
40785 View0.862Najem W.M.; Dubai N.J.; Ibadi N.A.Optimizing Edge Computing For Iot EcosystemsJournal of Information Systems Engineering and Management, 10, 17 (2025)
2802 View0.859Liu Z.R.A Multi-Joint Optimisation Method For Distributed Edge Computing Resources In Iot-Based Smart CitiesJournal of Grid Computing, 21, 4 (2023)