Smart City Gnosys

Smart city article details

Title Energy Prediction In Edge Environment For Smart Cities
ID_Doc 23364
Authors Oyinlola O.
Year 2021
Published 7th IEEE World Forum on Internet of Things, WF-IoT 2021
DOI http://dx.doi.org/10.1109/WF-IoT51360.2021.9595460
Abstract People around the world are trending to the Internet of Things (IoT) technologies. A large number of IoT devices are installed every day to enhance the sophistication and sustainability of smart cities. Besides, a smart city needs a smart energy management system including a smart grid, smart building. Also, a smart energy distribution system is important to reduce energy and manage it efficiently. The IoT devices are installed in various buildings in the city, they use a lot of energy, and produce energy usage information. In the existing cloud system, it is difficult to analyze and transfer the data quickly, similarly impossible to receive the analysis result immediately. However, edge computing has the advantage of fast data analysis and supply analyzed results to the field. In this process, data is processed in the edge environment, where data has been collected, analyzed, and processed in the edge nodes. In this study, we presented an energy prediction model based on the edge computing technique. We used a dataset where various environmental and energy use information has been considered. Also, we have used five different Machine Learning (ML) classifiers to classify the prediction model and assess the prediction performance. This study presents an energy prediction model using various ML classifiers in an edge computing environment. © 2021 IEEE.
Author Keywords edge computing; energy; internet of things; machine learning


Similar Articles


Id Similarity Authors Title Published
23181 View0.928Lee S.H.; Lee T.; Kim S.; Park S.Energy Consumption Prediction System Based On Deep Learning With Edge Computing2019 2nd International Conference on Electronics Technology, ICET 2019 (2019)
2566 View0.922Wu H.; Wang C.; Zhou Y.; Xie W.; Chen C.A Method For Local Analysis Of Electric Energy Monitoring DataInternational Journal of Innovative Computing, Information and Control, 18, 1 (2022)
8433 View0.91Udayakumar R.; Mahesh B.; Sathiyakala R.; Thandapani K.; Choubey A.; Khurramov A.; Alzubaidi L.H.; Sravanthi J.An Integrated Deep Learning And Edge Computing Framework For Intelligent Energy Management In Iot-Based Smart CitiesInternational Conference for Technological Engineering and its Applications in Sustainable Development, ICTEASD 2023 (2023)
22927 View0.908Nizam M.K.; Goyal S.B.; Verma C.; Illés Z.Empowering Smart Cities With Edge Computing-Based Iot Systems: A Focus On Data Analytics And Machine Learning TechniquesLecture Notes in Electrical Engineering, 1194 (2024)
42825 View0.902Yoon G.; Park S.; Park S.; Lee T.; Kim S.; Jang H.; Lee S.; Park S.Prediction Of Machine Learning Base For Efficient Use Of Energy Infrastructure In Smart CityProceedings - 2019 International Conference on Computing, Electronics and Communications Engineering, iCCECE 2019 (2019)
33805 View0.893Shah S.N.H.Iot Enabled Smart Grid Integration With Edge Computing Method2023 3rd International Conference on Communication, Computing and Digital Systems, C-CODE 2023 (2023)
32375 View0.89Nikpour M.; Yousefi P.B.; Jafarzadeh H.; Danesh K.; Shomali R.; Asadi S.; Lonbar A.G.; Ahmadi M.Intelligent Energy Management With Iot Framework In Smart Cities Using Intelligent Analysis: An Application Of Machine Learning Methods For Complex Networks And SystemsJournal of Network and Computer Applications, 235 (2025)
55267 View0.89Albataineh H.; Nijim M.; Bollampall D.The Design Of A Novel Smart Home Control System Using Smart Grid Based On Edge And Cloud Computing2020 8th International Conference on Smart Energy Grid Engineering, SEGE 2020 (2020)
30376 View0.887Cheng Y.L.; Lim M.H.; Hui K.H.Impact Of Internet Of Things Paradigm Towards Energy Consumption Prediction: A Systematic Literature ReviewSustainable Cities and Society, 78 (2022)
19454 View0.887Gulhane M.; Tiwari A.; Bhattacharya S.; Kashid S.S.; Dhabliya D.; Gandhi Y.Developing Energy-Efficient Iot Architecture With Edge And Fog Computing For Smart Cities2025 International Conference on Emerging Smart Computing and Informatics, ESCI 2025 (2025)