Data-driven multi-objective optimization for electric vehicle charging infrastructure

This paper presents a data-driven methodology combining simulation and multi-objective optimization to efficiently implement transportation policy commitments, using as a case study the electric vehicle (EV) charging infrastructure in Newcastle upon Tyne, United Kingdom. The methodology leverages a...

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Veröffentlicht in:iScience 2023-10, Vol.26 (10), p.107737-107737, Article 107737
Hauptverfasser: Farhadi, Farzaneh, Wang, Shixiao, Palacin, Roberto, Blythe, Phil
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Sprache:eng
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Zusammenfassung:This paper presents a data-driven methodology combining simulation and multi-objective optimization to efficiently implement transportation policy commitments, using as a case study the electric vehicle (EV) charging infrastructure in Newcastle upon Tyne, United Kingdom. The methodology leverages a baseline simulation model developed by our industry partner, Arup Group Limited, to estimate EV demand and quantities from 2020 to 2050. Four future energy scenarios are considered, and a multi-objective optimization approach is employed to determine the optimal types, locations, and quantities of charging points, along with the corresponding total capital and operational expenditures and charging point operating hours. Quantitatively, the variations of the portions of different types of charging points for the four scenarios are relatively small and within 3% range of the total number of charging points. The optimal solutions put priority on the slower charging points, with faster charging points having smaller portions each around 10%–13%. [Display omitted] •Data-driven optimization method for electric vehicle charging infrastructure planning•Combining simulation and multi-objective optimization for future EV charging stations•Cost reduction with higher diversity in the charging types and higher power points Electrical engineering; Energy engineering; Energy Resources
ISSN:2589-0042
2589-0042
DOI:10.1016/j.isci.2023.107737