Evaluation Method of Electric Vehicle Charging Station Operation Based on Contrastive Learning
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Published:2023-07-24
Issue:3
Volume:7
Page:133
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ISSN:2504-2289
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Container-title:Big Data and Cognitive Computing
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language:en
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Short-container-title:BDCC
Author:
Tang Ze-Yang1, Hu Qi-Biao2, Cui Yi-Bo1, Hu Lei3, Li Yi-Wen1, Li Yu-Jie2
Affiliation:
1. State Grid Hubei Electric Power Research Institute, Wuhan 430077, China 2. School of Information Management, Wuhan University, Wuhan 430072, China 3. School of Microelectronics, Hubei University, Wuhan 430062, China
Abstract
This paper aims to address the issue of evaluating the operation of electric vehicle charging stations (EVCSs). Previous studies have commonly employed the method of constructing comprehensive evaluation systems, which greatly relies on manual experience for index selection and weight allocation. To overcome this limitation, this paper proposes an evaluation method based on natural language models for assessing the operation of charging stations. By utilizing the proposed SimCSEBERT model, this study analyzes the operational data, user charging data, and basic information of charging stations to predict the operational status and identify influential factors. Additionally, this study compared the evaluation accuracy and impact factor analysis accuracy of the baseline and the proposed model. The experimental results demonstrate that our model achieves a higher evaluation accuracy (operation evaluation accuracy = 0.9464; impact factor analysis accuracy = 0.9492) and effectively assesses the operation of EVCSs. Compared with traditional evaluation methods, this approach exhibits improved universality and a higher level of intelligence. It provides insights into the operation of EVCSs and user demands, allowing for the resolution of supply–demand contradictions that are caused by power supply constraints and the uneven distribution of charging demands. Furthermore, it offers guidance for more efficient and targeted strategies for the operation of charging stations.
Funder
National Natural Science Foundation of China State Grid Hubei Electric Power Co., Ltd.
Subject
Artificial Intelligence,Computer Science Applications,Information Systems,Management Information Systems
Reference49 articles.
1. (2023, February 12). The 2022 White Paper on Charging Behavior of Electric Vehicle Users in China. Available online: https://xueqiu.com/S/SH516590/243818840. 2. He, L., He, J., Zhu, L., Huang, W., Wang, Y., and Yu, H. (2022). Comprehensive evaluation of electric vehicle charging network under the coupling of traffic network and power grid. PLoS ONE, 17. 3. Yan, Q., Dong, H., and Zhang, M. (2021). Service evaluation of electric vehicle charging station: An application of improved matter-element extension method. Sustainability, 13. 4. On sustainable positioning of electric vehicle charging stations in cities: An integrated approach for the selection of indicators;Carra;Sustain. Cities Soc.,2022 5. Almaghrebi, A., Aljuheshi, F., Rafaie, M., James, K., and Alahmad, M. (2020). Data-driven charging demand prediction at public charging stations using supervised machine learning regression methods. Energies, 13.
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