Modeling electric vehicle charging patterns: A review
Rémi Lauvergne,
Yannick Perez () and
Alberto Tejeda
Revue d'économie industrielle, 2022, vol. n° 178-179, issue 2, 247-286
Abstract:
?Electric vehicles (EVs) offer an opportunity to move towards greenhouse gas emission reduction targets by decarbonizing the transport sector as well as reduce local air pollution. However, uncontrolled and simultaneous charging of a significant number of EVs could pose a challenge to electricity grids and generation-load adequacy. Studying these impacts requires a predictive model of EV fleet recharging. Here we review techniques for EV charging pattern modeling and the types of studies they are used for. The paper also introduces the wide range of parameters (vehicle types, charging points, plug-in behavior, etc.) that modeling studies can factor in, and the EV smart charging simulation approaches available. We conclude by proposing a framework for future research on EV load prediction models. ? ?JEL classification: ? ?C02, C65, L62, L94, Q40? ?.?
Keywords: electric vehicle modeling; smart charging; charging patterns (search for similar items in EconPapers)
JEL-codes: C02 C65 L62 L94 Q40 (search for similar items in EconPapers)
Date: 2022
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Persistent link: https://EconPapers.repec.org/RePEc:cai:reidbu:rei_178_0247
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