Smart City Gnosys

Smart city article details

Title A Review Of Charging Schemes And Machine Learning Techniques For Intelligent Management Of Electric Vehicles In Smart Grid
ID_Doc 4133
Authors Qaisar S.M.; Alyamani N.
Year 2022
Published Managing Smart Cities: Sustainability and Resilience Through Effective Management
DOI http://dx.doi.org/10.1007/978-3-030-93585-6_4
Abstract The evolution of information and communication technology (ICT) contributes to the realization of smart cities. A smart grid is a vital element of any smart city. One of the major focuses of the upcoming smart cities is the deployment of ecofriendly intelligent systems to sustainably improve the quality of life of its habitants. To attain sustainable and green transportation, the deployment of electric vehicles (EVs) is evolving. Integration of EVs has raised various challenges such as charging infrastructures and load forecasting. Therefore, intelligent management techniques are required in this context. Various appealing tactics have been presented to solve such challenges. These are mainly based on the Internet of Things (IoT), machine learning algorithms and automata models. This chapter presents a comprehensive review of the electric vehicle charging schemes, standards, and application of various machine learning algorithms to intelligently manage the electric vehicle in the smart grid based future cities. © The Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Switzerland AG 2022.
Author Keywords Data-driven techniques; Dynamic charging; Electric vehicles; Intelligent management systems; Load prediction; Machine learning; Signal processing; Smart cities; Smart grid


Similar Articles


Id Similarity Authors Title Published
22524 View0.935Doda D.K.; Beemkumar N.; Awasthi A.; Gautam A.K.Electric Vehicle Energy Management: Charging In Sustainable Urban Settings For Smart CitiesE3S Web of Conferences, 540 (2024)
22520 View0.928Mazhar T.; Asif R.N.; Malik M.A.; Nadeem M.A.; Haq I.; Iqbal M.; Kamran M.; Ashraf S.Electric Vehicle Charging System In The Smart Grid Using Different Machine Learning MethodsSustainability (Switzerland), 15, 3 (2023)
35913 View0.926Shahriar S.; Al-Ali A.R.; Osman A.H.; Dhou S.; Nijim M.Machine Learning Approaches For Ev Charging Behavior: A ReviewIEEE Access, 8 (2020)
45464 View0.908Manivannan R.Research On Iot-Based Hybrid Electrical Vehicles Energy Management Systems Using Machine Learning-Based AlgorithmSustainable Computing: Informatics and Systems, 41 (2024)
32652 View0.904Cao Y.; Ahmad N.; Kaiwartya O.; Puturs G.; Khalid M.Intelligent Transportation Systems Enabled Ict Framework For Electric Vehicle Charging In Smart CityHandbook of Smart Cities: Software Services and Cyber Infrastructure (2018)
30935 View0.903Youness H.; Mohamed T.; Ahmed G.; Hajar A.; Benachir E.L.H.Improving The Effectiveness Of Electric Vehicle Charging Infrastructure Within A Smart City Using Artificial Neural Networks (Ann) And The Internet Of Vehicles (Iov)Proceedings of the International Conference on Microelectronics, ICM (2024)
42854 View0.9Garg R.; Deogaonkar A.; Garia P.; Ahamad I.; Kharayat P.S.; Joshi T.Prediction Of User Behaviour Of Electric Vehicles Utilizing Ensembled Machine Learning Technique2024 IEEE International Conference on Communication, Computing and Signal Processing, IICCCS 2024 (2024)
51428 View0.898Ramya R.; Premalatha R.; Prasad A.R.; Pudi A.; Raju C.V.V.N.; Varalatchoumy M.Smart Solutions For Electric Vehicles Using Ai In Mobility And InfrastructureInnovations in Power Systems and Applications (2025)
35984 View0.897Deb S.Machine Learning For Solving Charging Infrastructure Planning: A Comprehensive Review5th International Conference on Smart Grid and Smart Cities, ICSGSC 2021 (2021)
36044 View0.894Neelakantam G.Machine Learning-Based Decision Making For Charging/Discharging Cost Optimization Of Prev In Smart CityProceedings of the 1st International Symposium on Parallel Computing and Distributed Systems, PCDS 2024 (2024)