Application of Variational Graph Autoencoder in Traction Control of Energy-Saving Driving for High-Speed Train

Author:

Ma Weigang1,Wang Jing1,Zhang Chaohui1,Jia Qiao1,Zhu Lei1ORCID,Ji Wenjiang1ORCID,Wang Zhoukai1

Affiliation:

1. Faculty of Computer Science and Engineering, Xi’an University of Technology, Xi’an 710048, China

Abstract

In a high-speed rail system, the driver repeatedly adjusts the train’s speed and traction while driving, causing a high level of energy consumption. This also leads to the instability of the train’s operation, affecting passengers’ experiences and the operational efficiency of the system. To solve this problem, we propose a variational graph auto-encoder (VGAE) model using a neural network to learn the posterior distribution. This model can effectively capture the correlation between the components of a high-speed rail system and simulate drivers’ operating state accurately. The specific traction control is divided into two parts. The first part employs an algorithm based on the K-Nearest Neighbors (KNN) algorithm and undersampling to address the negative impact of imbalanced quantities in the training dataset. The second part utilizes a variational graph autoencoder to derive the initial traction control of drivers, thereby predicting the energy performance of the drivers’ operation. An 83,786 m long high-speed train driving section is used as an example for verification. By using a confusion matrix for our comparative analysis, it was concluded that the energy consumption is approximately 18.78% less than that of manual traction control. This shows the potential and effect of the variational graph autoencoder model for optimizing energy consumption in high-speed rail systems.

Funder

National Natural Science Foundation of China

Publisher

MDPI AG

Reference26 articles.

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3. Ning, L., Zhou, M., Wu, W., Zhang, Z., Liu, C., and Dong, H. (2021, January 22–24). Train Trajectory Optimization for High-speed Railways under Constraints of Successive Trains. Proceedings of the 2021 China Automation Congress (CAC), Beijing, China.

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