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Neural Computing and Applications

, Volume 31, Issue 4, pp 1249–1258 | Cite as

MR-SAS and electric power steering variable universe fuzzy PID integrated control

  • Zhaolong CaoEmail author
  • Shuai Zheng
Original Article
  • 84 Downloads

Abstract

In order to solve the problem of MR-SAS and electric power steering (EPS) integrated control, the suspension and steering system integrated dynamic model was established, and the variable universe fuzzy PID integrated controller was designed. Due to the difficulty of self-adaptive and the superiority of compound control of fuzzy control, the variable universe fuzzy PID compound controller based on fuzzy inference was designed. The fuzzy on–off control based on trapezoidal membership function was used to the fuzzy control and PID control. And the random road input and steering wheel angle step input simulation experiment was carried out in the integrated system. Compared with the passive system and separate control, experimental results show that the integrated control system has obvious superiority.

Keywords

MR-SAS EPS Variable universe fuzzy control PID control Integrated control 

Notes

Compliance with ethical standards

Conflict of interest

The authors declare that there are no competing interests regarding the publication of this paper.

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Copyright information

© The Natural Computing Applications Forum 2017

Authors and Affiliations

  1. 1.School of Mathematics and PhysicsYancheng Institute of TechnologyYanchengChina
  2. 2.ASIMCO NVH Technology Co. (Anhui), Ltd.XuanchengChina

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