Speed Tracking and Anti-Slip Control for Heavy Freight Trains Considering the Conicity of the Wheel

Author:

Yi LingZhi1,Yi Yu1,Li JianLing2,Xie Chen1,Zhang DaKe1ORCID,Jiang WenBo1

Affiliation:

1. XiangTan University, Xiangtan, China

2. North China University of Technology, Beijing, China

Abstract

To ensure the safe and punctual transportation of freight trains, it is crucial for the train to travel at the targeted speed on the track. This paper proposes a scheme for speed tracking and anti-slip control for freight trains. The speed tracking is implemented through predictive auto disturbance rejection control (PADRC), which includes a flexible Smith estimation module capable of accurately predicting the output of large time delay systems, such as freight trains. The key to anti-slip control relies on the precise observation of the radial velocity and slip rate. Therefore, an unscented Kalman filter observer is designed in this article, incorporating an adaptive parameter adjustment mechanism to enhance observation accuracy. The anti-slip parameters obtained from this observer can then be used to determine the anti-slip control scheme. The effectiveness of this scheme is demonstrated through simulations of the HXD1 electric traction locomotive’s driving process, using line data from the Geku line section in China. Compared to conventional active disturbance rejection control, PADRC reduces speed fluctuation by 55%, and freight trains under anti-slip control decrease the slip speed by 90%.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Hunan Province

Publisher

SAGE Publications

Subject

Mechanical Engineering,Civil and Structural Engineering

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