Probabilistic Forecasting of Electric Vehicle Charging Load Using Composite Quantile Regression LSTM

摘要

With the explosive development of electric vehicles (EVs), the impact on the operation and planning of low voltage distribution network has become more and more significant. Therefore, ordered charging control strategies of EVs are proposed, which require accurate EV charging load forecasting. Under this background, this paper carries out a probabilistic forecasting model combining composite quantile regression and LSTM neural network for EV charging load forecasting. Firstly, a composite long-short term memory (LSTM) neural network is built to obtain synchronously quantile forecasting. Secondly, kernel density estimation method is used to estimate probability density function. Finally, the performance of the proposed model is verified on real residential EV charging load data, with 97.92 % predicting interval coverage probability (PICP) at 90% confidence level, better than the comparison model.

出版物
2023 IEEE/IAS Industrial and Commercial Power System Asia
庞彬
庞彬
硕士研究生

庞彬,硕士研究生在读,研究方向为光伏微型逆变器。

耿光超
耿光超
副教授 | 博士生导师

耿光超,工学博士,浙江大学电气工程学院副教授、博士生导师,电机工程学系副主任,电力系统自动化所副所长,电气工程学院特聘助理,IEEE高级会员。