posted on 2025-07-22, 10:46authored byXiao Liu, Zhongbei Tian, Yuan GaoYuan Gao, Lin Jiang, Rob MP Goverde
As regenerative braking systems become more widespread in railways, rising attention is paid to collaborative train operations under optimised timetables to enhance regenerative braking efficiency. The effective usage of regenerative braking energy is determined by the dynamic nature of the traction power supply network, driven by constant changes in train power and positions. However, solving the power flow with multiple trains significantly increases the computing time required to solve the optimisation model. Most existing methods have to solve optimisation problems neglecting the dynamic power flow analysis, which sacrifices the accuracy of regeneration efficiency. To address this challenge, we propose a data-driven model which emulates the power flow analysis and reduces the computational demands. Initially, data from both single and multi-train simulators are collected and stored in a database, from which critical information regarding train position, power, and substation power is extracted. A neural network is then used to develop a data-driven model that predicts the power of a substation in a power supply network based on train positions and powers. Case studies with Beijing Yizhuang Metro line data show that the calculation time of the data-driven model is 0.33% of the power flow simulation while keeping the accuracy above 99%. Based on this data-driven model, by optimising train speed profile and dwell time, the energy supplied by substations can be reduced by up to 13% compared to traction optimisation.<p></p>
Funding
Engineering and Physical Sciences Research Council (Grant Number: EP/Y003136/1)
History
Author affiliation
College of Science & Engineering
Engineering
Version
AM (Accepted Manuscript)
Published in
IEEE Transactions on Transportation Electrification
Pagination
1 - 1
Publisher
Institute of Electrical and Electronics Engineers (IEEE)