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Improving Vehicle Ride and Handling Using LQG CNF Fusion Control Strategy for an Active Antiroll Bar System

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  • N. Zulkarnain
  • H. Zamzuri
  • Y. M. Sam
  • S. A. Mazlan
  • S. M. H. F. Zainal

Abstract

This paper analyses a comparison of performance for an active antiroll bar (ARB) system using two types of control strategy. First of all, the LQG control strategy is investigated and then a novel LQG CNF fusion control method is developed to improve the performances on vehicle ride and handling for an active antiroll bar system. However, the ARB system has to balance the trade-off between ride and handling performance, where the CNF consists of a linear feedback law and a nonlinear feedback law. Typically, the linear feedback is designed to yield a quick response at the initial stage, while the nonlinear feedback law is used to smooth out overshoots in the system output when it approaches the target reference. The half car model is combined with a linear single track model with roll dynamics which are used for the analysis and simulation of ride and handling. The performances of the control strategies are compared and the simulation results show the LQG CNF fusion improves the performances in vehicle ride and handling.

Suggested Citation

  • N. Zulkarnain & H. Zamzuri & Y. M. Sam & S. A. Mazlan & S. M. H. F. Zainal, 2014. "Improving Vehicle Ride and Handling Using LQG CNF Fusion Control Strategy for an Active Antiroll Bar System," Abstract and Applied Analysis, Hindawi, vol. 2014, pages 1-14, October.
  • Handle: RePEc:hin:jnlaaa:698195
    DOI: 10.1155/2014/698195
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