Research on Temporal and Spatial Distribution of Electric Vehicle (EV) Charging Load Based on Real Data & Simulation
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更新:2021-12-09 11:58:45
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摘要
To solve the problems of over-theorization and lack of real data in the current research, this paper proposes a data-driven EV charging load demand forecasting model. The model is based on analysis of residents’ travel patterns hided in EV travel data and single EV charging & discharging model considering its related characteristics. The results of a calculation example in Chengdu show that the proposed model can effectively predict the temporal and spatial distribution characteristics of EV charging load in different urban functional areas and in different time ranges. This provides a basis for the construction of charging stations and charging load management after EV have been applied in large scale. To solve the problems of over-theorization and lack of real data in the current research, this paper proposes a data-driven EV charging load demand forecasting model. The model is based on analysis of residents’ travel patterns hided in EV travel data and single EV charging & discharging model considering its related characteristics. The results of a calculation example in Chengdu show that the proposed model can effectively predict the temporal and spatial distribution characteristics of EV charging load in different urban functional areas and in different time ranges. This provides a basis for the construction of charging stations and charging load management after EV have been applied in large scale.
关键词
electric vehicle (EV); data mining; charging load forecasting; simulation
稿件作者
Zezhao Chen
UESTC
Jierui Zhang
UESTC
Yalong Guo
UESTC
Jialin Du
UESTC
Zongxing Xin
UESTC
Qianyu Li
Xi'an Jiaotong University
Changhua Zhang
UESTC
Xiaohao Xu
UESTC
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