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Automotive Engineering ›› 2022, Vol. 44 ›› Issue (10): 1527-1536.doi: 10.19562/j.chinasae.qcgc.2022.10.007

Special Issue: 底盘&动力学&整车性能专题2022年

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Estimation of Vehicle Motion State Based on Hybrid Neural Network

Zhenhai Gao1,Wenhao Wen1,Minghong Tang1,Jian Zhang2,Guoying Chen1()   

  1. 1.Jilin University,State Key Laboratory of Automobile Simulation and Control,Changchun  130022
    2.Intelligent Connected Vehicle Development Institute,China FAW Group Co. ,Ltd. ,Changchun  130000
  • Received:2022-04-17 Revised:2022-05-13 Online:2022-10-25 Published:2022-10-21
  • Contact: Guoying Chen E-mail:cgy-011@163.com

Abstract:

For the problem that the existing vehicle motion state estimation algorithm relies heavily on the accuracy of the dynamic model and the accuracy is difficult to guarantee under large slip angle, the paper proposes a vehicle motion state estimation algorithm based on the hybrid neural network (HNN). By analyzing the basic dynamic characteristics of the vehicle itself, an hybrid neural network architecture suitable for vehicle motion state estimation is designed, and the deep learning estimation of vehicle motion state is realized. Based on the dataset composed of multi standard operating conditions and typical real vehicle test conditions, network training and test verification are carried out. The results show that compared with the traditional algorithm, the proposed HNN algorithm realizes estimation of vehicle motion state without dynamic vehicle model, improves estimation accuracy, and is robust to road adhesion coefficient change.

Key words: vehicle state estimation, deep learning, gated recurrent unit, multilayer perceptron, hybrid neural network