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- Title
Situation Awareness of Electric Vehicle Charging Load Based on Random Forest Algorithm.
- Authors
Bo, Wen; Wang, Donglai; Zhao, Yan; Li, Quanzheng; Zhang, Zhen
- Abstract
Due to the important characteristics of energy saving and carbon reduction, electric vehicles have attracted worldwide attention. It can be predicted that the power grid will be faced with the access problem of large-scale electric vehicles. In order to master the user behavior characteristics of electric vehicle load, it is necessary to establish the model based on electric vehicle charging behavior. In this paper, combined with the electric vehicle charging demand and the situational awareness results of the dispatchable resources in the station area, the characteristic indicators of the electric vehicle load are quantitatively analyzed. Situational prediction of electric vehicle load based on random forest algorithm is proposed, and the sample set is divided and trained. A simulation example is used to verify the effectiveness of the method provided in load forecasting.
- Subjects
RANDOM forest algorithms; ELECTRIC vehicles; SITUATIONAL awareness; ELECTRIC power distribution grids
- Publication
International Transactions on Electrical Energy Systems, 2022, p1
- ISSN
2050-7038
- Publication type
Article
- DOI
10.1155/2022/2821495