Paper
31 October 2022 Research on charging load prediction technology of electric vehicles based on multilayer perceptron
Author Affiliations +
Proceedings Volume 12457, Second International Conference on Testing Technology and Automation Engineering (TTAE 2022); 124570F (2022) https://doi.org/10.1117/12.2660679
Event: Second International Conference on Testing Technology and Automation Engineering (TTAE 2022), 2022, Changchun, China
Abstract
In recent years, the electric vehicle market has been expanding rapidly. By the end of 2021, the number of new energy vehicles in the country will reach 7.84 million, accounting for 2.60% of the total number of vehicles, an increase of 59.25% over 2020. A small number of electric vehicles will not have an impact on the power grid. But in the future, with the electrification of all passenger cars, large-scale electric vehicles will emerge in the future. The access to large-scale electric vehicles and charging piles to the power grid will bring new challenges to the normal operation and control of the power grid. Therefore, charging load forecasting is essential. This paper proposes a load forecasting model based on a multilayer perceptron. It can predict the charging load of electric vehicles in a specific area and provide a reference for urban infrastructure planning and construction, optimal power flow of power systems, and economic dispatch of power grids.
© (2022) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Tingting Xu, Huicai Wang, Gaolin Wu, Xiaorui Hu, and Min He "Research on charging load prediction technology of electric vehicles based on multilayer perceptron", Proc. SPIE 12457, Second International Conference on Testing Technology and Automation Engineering (TTAE 2022), 124570F (31 October 2022); https://doi.org/10.1117/12.2660679
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KEYWORDS
Feature selection

Roads

Monte Carlo methods

Neural networks

Artificial neural networks

Data modeling

Power supplies

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