Data-driven method for electric vehicle charging demand analysis: Case study in Virginia

Zhaocai Liu,Brennan Borlaug,Andrew Meintz, Christopher Neuman,Eric Wood, Jesse Bennett

TRANSPORTATION RESEARCH PART D-TRANSPORT AND ENVIRONMENT(2023)

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摘要
Electric vehicle (EV) adoption in the U.S. will be accelerated by the historic $7.5 billion public investments in EV charging infrastructure. Careful analysis of EV charging demands plays a vital role in understanding the energy requirements, power grid impact, and smart charging management opportunities of EVs. To this end, this paper develops a data-driven trip-chaining-based modeling framework including five steps: Trip data acquisition and preprocessing, EV adoption modeling, travel itinerary synthesis, EV charging demand simulation and EV load profile generation. The developed analysis framework was demonstrated using real-world data for one region in Virginia, U.S. The results show that the proposed modeling framework can work effectively. For the study region in 2040, the predicted number of plug-in EVs is 470,114, resulting in a weekly charging demand of 38,078,127 kWh (55 % home, 9 % work, and 36 % public) in September and 45,920,358 kWh (61 % home, 9 % work, and 30 % public) in February.
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关键词
Electric vehicle charging demand,Connected vehicle data,Trip chaining,Land use data
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