Research on Machine Learning-Based Method for Predicting Industrial Park Electric Vehicle Charging Load

被引:0
|
作者
Ma, Sijiang [1 ,2 ]
Ning, Jin [1 ,2 ]
Mao, Ning [1 ,3 ]
Liu, Jie [1 ,3 ]
Shi, Ruifeng [1 ,2 ]
机构
[1] Lab Transport Pollut Control & Monitoring Technol, Beijing 100084, Peoples R China
[2] North China Elect Power Univ, Sch Control & Comp Engn, Beijing 102206, Peoples R China
[3] Minist Transport, Transport Planning & Res Inst, Beijing 100028, Peoples R China
关键词
electric vehicle ordered charging; load forecasting; machine learning; industrial parks; green transportation; energy transition; sustainability;
D O I
10.3390/su16177258
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
To achieve global sustainability goals and meet the urgent demands of carbon neutrality, China is continuously transforming its energy structure. In this process, electric vehicles (EVs) are playing an increasingly important role in energy transition and have become one of the primary user groups in the electricity market. Traditional load prediction algorithms have difficulty in constructing mathematical models for predicting the charging load of electric vehicles, which is characterized by high randomness, high volatility, and high spatial heterogeneity. Moreover, the predicted results often exhibit a certain degree of lag. Therefore, this study approaches the analysis from two perspectives: the overall industrial park and individual charging stations. By analyzing specific load data, the overall framework for the training dataset was established. Additionally, based on the evaluation system proposed in this study and utilizing both Multilayer Perceptron (MLP) and Long Short-Term Memory (LSTM) algorithms, a framework for machine learning-based load prediction methods was constructed to forecast electric vehicle charging loads in industrial parks. Through a case analysis, it was found that the proposed solution for the short-term prediction of the charging load in industrial park electric vehicles can achieve accurate and stable forecasting results. Specifically, in terms of data prediction for normal working days and statutory holidays, the Long Short-Term Memory (LSTM) algorithm demonstrated high accuracy, with R2 coefficients of 0.9283 and 0.9154, respectively, indicating the good interpretability of the model. In terms of weekend holiday data prediction, the Multilayer Perceptron (MLP) algorithm achieved an R2 coefficient of as high as 0.9586, significantly surpassing the LSTM algorithm's value of 0.9415, demonstrating superior performance.
引用
收藏
页数:18
相关论文
共 50 条
  • [31] Machine Learning-Based Electric Vehicle Charging Demand Prediction Using Origin-Destination Data: A UAE Case Study
    ElGhanam, Eiman
    Hassan, Mohamed
    Osman, Ahmed
    2022 5TH INTERNATIONAL CONFERENCE ON COMMUNICATIONS, SIGNAL PROCESSING, AND THEIR APPLICATIONS (ICCSPA), 2022,
  • [32] Machine Learning-Based Electric Vehicle Charging Demand Prediction Using Origin-Destination Data: A UAE Case Study
    American University of Sharjah, Department of Electrical Engineering, P.O. Box 26666, Sharjah, United Arab Emirates
    Int. Conf. Commun., Signal Process., Appl., ICCSPA, 1600,
  • [33] Ensemble machine learning-based algorithm for electric vehicle user behavior prediction
    Chung, Yu-Wei
    Khaki, Behnam
    Li, Tianyi
    Chu, Chicheng
    Gadh, Rajit
    APPLIED ENERGY, 2019, 254
  • [34] A Machine Learning-Based Approach for Predicting Tool Wear in Industrial Milling Processes
    Van Herreweghe, Mathias
    Verbeke, Mathias
    Meert, Wannes
    Jacobs, Tom
    MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES, ECML PKDD 2019, PT II, 2020, 1168 : 414 - 425
  • [35] Electric Vehicle Charging Station Load Analyzing Based on Monte-Carlo Method
    Vorobjovs, Maksims
    Berzina, Kristina
    Zirovecka, Anastasija
    2018 20TH EUROPEAN CONFERENCE ON POWER ELECTRONICS AND APPLICATIONS (EPE'18 ECCE EUROPE), 2018,
  • [36] Selecting Locations of Electric Vehicle Charging Stations Based on the Traffic Load Eliminating Method
    Choi, Bong-Gi
    Oh, Byeong-Chan
    Choi, Sungyun
    Kim, Sung-Yul
    ENERGIES, 2020, 13 (07)
  • [37] Electric Vehicle Charging Hub Power Forecasting: A Statistical and Machine Learning Based Approach
    Lo Franco, Francesco
    Ricco, Mattia
    Cirimele, Vincenzo
    Apicella, Valerio
    Carambia, Benedetto
    Grandi, Gabriele
    ENERGIES, 2023, 16 (04)
  • [38] Machine Learning-Based Research for Predicting Shale Gas Well Production
    Qi, Nijun
    Li, Xizhe
    Wu, Zhenkan
    Wan, Yujin
    Wang, Nan
    Duan, Guifu
    Wang, Longyi
    Xiang, Jing
    Zhao, Yaqi
    Zhan, Hongming
    SYMMETRY-BASEL, 2024, 16 (05):
  • [39] Evaluation Method of Electric Vehicle Charging Station Operation Based on Contrastive Learning
    Tang, Ze-Yang
    Hu, Qi-Biao
    Cui, Yi-Bo
    Hu, Lei
    Li, Yi-Wen
    Li, Yu-Jie
    BIG DATA AND COGNITIVE COMPUTING, 2023, 7 (03)
  • [40] Deep Learning Based Automatic Charging Identification and Positioning Method for Electric Vehicle
    Zhu, Hao
    Sun, Chao
    Zheng, Qunfeng
    Zhao, Qinghai
    CMES-COMPUTER MODELING IN ENGINEERING & SCIENCES, 2023, 136 (03): : 3265 - 3283