EV Charging Station Load Prediction in Coupled Urban Transportation and Distribution Networks

被引:0
作者
Li, Benxin [1 ]
Chang, Xuanming [1 ]
机构
[1] School of Electrical Engineering, Northeast Electric Power University, Jilin
来源
Energy Engineering: Journal of the Association of Energy Engineering | 2024年 / 121卷 / 10期
基金
中国国家自然科学基金;
关键词
charging load forecasting; charging stations; dynamic electricity pricing; dynamic traffic information; Electric vehicle;
D O I
10.32604/ee.2024.051332
中图分类号
学科分类号
摘要
The increasingly large number of electric vehicles (EVs) has resulted in a growing concern for EV charging station load prediction for the purpose of comprehensively evaluating the influence of the charging load on distribution networks. To address this issue, an EV charging station load prediction method is proposed in coupled urban transportation and distribution networks. Firstly, a finer dynamic urban transportation network model is formulated considering both nodal and path resistance. Then, a finer EV power consumption modelis proposed by considering the influence of traffic congestion and ambient temperature. Thirdly, the Monte Carlo method is applied to predict the distribution of EV charging station load based on the proposed dynamic urban transportation network model and finer EV power consumption model. Moreover, a dynamic charging pricing scheme for EVs is devised based on the EVcharging station load requirements and the maximum thresholds to ensure the security operation of distribution networks. Finally, the validity of the proposed dynamic urban transportation model was verified by accurately estimating five sets of test data on travel time by contrast with the BPR model. The five groups of travel time prediction results showed that the average absolute percentage errors could be improved from 32.87% to 37.21% compared to the BPR model. Additionally, the effectiveness of the proposed EV charging station load prediction method was demonstrated by four case studies in which the prediction of EV charging load was improved from 27.2 to 31.49 MWh by considering the influence of ambient temperature and speed on power energy consumption. © 2024 The Authors.
引用
收藏
页码:3001 / 3018
页数:17
相关论文
共 25 条
[1]  
Monika, China has 20.41 million new energy vehicles running on roads by end of 2023
[2]  
Veza I., Asy'ari M. Z., Idris M., Epin V., Electric vehicle (EV) and driving towards sustainability: Comparison between EV, HEV, PHEV, and ICE vehicles to achieve net zero emissions by 2050 from EV, Alex. Eng. J, 82, 1, pp. 459-467, (2023)
[3]  
Ji Z. Y., Huang X. L., Plug-in electric vehicle charging infrastructure deployment of China towards 2020: Policies, methodologies, and challenges, Renew. Sust. Energy Rev, 90, pp. 710-727, (2023)
[4]  
Buzna L. B., Et al., An ensemble methodology for hierarchical probabilistic electric vehicle load forecasting at regular charging stations, Appl. Energ, 283, (2021)
[5]  
Dang Q., Huo Y., Flexibility scheduling for microgrids with electric vehicle (EV) penetration, Proc. ECCE, pp. 1078-1083, (2018)
[6]  
Du J. Y., Ouyang M. G., Chen J. F., Prospects for Chinese electric vehicle technologies in 2016–2020: Ambition and rationality, Energy, 120, 1, pp. 584-596, (2017)
[7]  
Cheng Y., Zhang Z., Yu J. C., Feng W., Zhou C. X., Han Y. M., Research on operation and management multi-node of megacity energy internet, Glob. Energy Interconnect, 1, 2, pp. 130-136, (2018)
[8]  
Torrisi V., Ignaccolo M., Inturri G., Analysis of road urban transport network capacity through a dynamic assignment model: Validation of different measurement methods, Trans. Res. Procedia, 27, pp. 1026-1033, (2017)
[9]  
Mousavi M., Wu M., A DSO framework for market participation of DER aggregators in unbalanced distribution networks, IEEE Trans. Power Syst, 37, 3, pp. 2247-2258
[10]  
Mohammad S., Ali G. M., Electric vehicle fast charging station design by considering probabilistic model of renewable energy source and demand response, Energy, 267, (2023)