Controlling performance of semiactive suspension with two methods of fuzzy-control and machine-learning

Author:

Zhou Zhihong1,Liu Yang2ORCID,Xu Huichuan3,Zha Jili4,Chen Hanxin4ORCID

Affiliation:

1. Training branch, Shihezi Vocational and Technical College, Shihezi, China

2. School of Mechanical and Electrical Engineering, Shihezi University, Shihezi, China

3. Sanfeng Intelligent Equipment Group Co., Ltd, Shihezi, China

4. Daye Special Steel Co., LTD, Huangshi, China

Abstract

Two different methods of Fuzzy-control and Machine-learning are proposed to control the vehicle’s semiactive suspensions. To control performance of semiactive suspensions using machine learning (SS-ML) and semiactive suspensions using fuzzy control (SS-FC), a half-vehicle model has been established to calculate and simulate vibration equations under random road surfaces from ISO A-class to F-class. Via map of control rule data in SS-FC established at roads ISO A-class, B-class, …, and F-class, SS-ML’s Neuro-Adaptive-Learning has been trained for learning these control rules. The results obtained indicate that under the same road surface excitation of ISO C-class, the control performance of SS-FC and SS-ML is equivalent., and the vehicle’s comfort level using both SS-FC and SS-ML is very well improved in comparison with passive suspensions without control (PS-WC) of the vehicle. Under a mixed road surface from ISO A-class to F-class and a change range of the vehicle’s moving velocity from 2.5 m s−1 to 35m s−1 used for simulation, the vehicle’s comfort level using SS-ML is better than vehicle’s comfort level using SS-FC. Especially, the root mean square values of displacements and accelerations in vertical and pitch directions of the vehicle body with SS-ML are smaller than that of SS-FC by 13.4%, 23.2%, 20.7%, and 14.3%, respectively. Therefore, the control performance of SS-ML is better than SS-FC, and it should be used to control the vehicle’s semiactive suspensions for enhancing the comfort level.

Funder

Hubei Province Technological Innovation Special Project

Publisher

SAGE Publications

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