Smart City Gnosys

Smart city article details

Title Discovering Ev Recharging Patterns Through An Automated Analytical Workflow
ID_Doc 20471
Authors Richard R.; Cao H.; Wachowicz M.
Year 2020
Published 2020 IEEE International Smart Cities Conference, ISC2 2020
DOI http://dx.doi.org/10.1109/ISC251055.2020.9239052
Abstract The vision for smart cities is to provide a core infrastructure that enables a good quality of life for their citizens and the sustainable management of natural resources. Towards this vision, supporting the adoption of Electric Vehicles (EV) contributes to improved air quality, sustainable mobility, and utility distribution. Fostering EV adoption contends with concerns typically centered on vehicle range and costs. An understanding of EV charging patterns is therefore crucial for optimizing charging infrastructure placement and managing operational costs. Towards this end, this paper proposes an automated analytical workflow to gain insight from a large volume of real operational data from EV charging stations. The research goal is to establish a mechanism to descriptively analyse the EV charging data and to thoroughly diagnose whether low-demand charging station groupings can effectively be identified using spatio-temporal features and hierarchical clustering. Preliminary results suggest agglomerative clustering is effective at grouping similar charging stations together when considering spatial and temporal features of recharge events. © 2020 IEEE.
Author Keywords agglomerative hierarchical clustering; automated machine learning flow; charging infrastructure patterns; EV adoption


Similar Articles


Id Similarity Authors Title Published
35913 View0.9Shahriar S.; Al-Ali A.R.; Osman A.H.; Dhou S.; Nijim M.Machine Learning Approaches For Ev Charging Behavior: A ReviewIEEE Access, 8 (2020)
40337 View0.889Alanazi F.; Alshammari T.O.; Azam A.Optimal Charging Station Placement And Scheduling For Electric Vehicles In Smart CitiesSustainability (Switzerland), 15, 22 (2023)
22524 View0.887Doda 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)
35984 View0.88Deb S.Machine Learning For Solving Charging Infrastructure Planning: A Comprehensive Review5th International Conference on Smart Grid and Smart Cities, ICSGSC 2021 (2021)
35983 View0.876Deb S.Machine Learning For Solving Charging Infrastructure Planning Problems: A Comprehensive ReviewEnergies, 14, 23 (2021)
42812 View0.873Appadurai J.P.; Rajesh T.; Yugha R.; Sarkar R.; Thirumalraj A.; Kavin B.P.; Seng G.H.Prediction Of Ev Charging Behavior Using Boa-Based Deep Residual Attention NetworkRevista Internacional de Metodos Numericos para Calculo y Diseno en Ingenieria, 40, 2 (2024)
42854 View0.872Garg 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)
4133 View0.872Qaisar S.M.; Alyamani N.A Review Of Charging Schemes And Machine Learning Techniques For Intelligent Management Of Electric Vehicles In Smart GridManaging Smart Cities: Sustainability and Resilience Through Effective Management (2022)
28041 View0.871Nalin A.; Simone A.; Bellinato L.; Vignali V.; Lantieri C.Gis-Based Analysis To Locate Electric Vehicle Charging Stations In An Urban Environment: A Case Study In Bologna, ItalyTransportation Research Procedia, 90 (2025)
8309 View0.871Ramkumar V.; Nadaf A.B.; Ghamande M.V.; Dabral A.P.; Bharambe P.M.; Kumar D.An In-Depth Analysis Of Electric Vehicle Charging Station Based On Lstm And Svm Hybrid Model7th International Conference on Electronics, Communication and Aerospace Technology, ICECA 2023 - Proceedings (2023)