A CONTROLLER DESIGN OF ACTIVE SUSPENSION USING EVOLUTION STRATEGY AND NEURAL NETWORK

  • Cheon, Jong-Min (Instrumentation & Control Research Group, Korea Electrotechnology Research Institute) ;
  • Kim, Seog-Joo (Instrumentation & Control Research Group, Korea Electrotechnology Research Institute) ;
  • Lee, Jong-Moo (Instrumentation & Control Research Group, Korea Electrotechnology Research Institute) ;
  • Kwon, Soon-Man (Instrumentation & Control Research Group, Korea Electrotechnology Research Institute)
  • Published : 2005.06.02

Abstract

In this paper, we design a Linear Quadratic Gaussian controller for the active suspension. We can improve the inherent suspension problem, trade-off between the ride quality and the suspension travel by selecting appropriate weights in the LQ-objective function. Because any definite rules for selecting weights do not exist, we use an optimization-algorithm, Evolution Strategy (ES) to find the proper control gains for selected frequencies, which have major effects on the vibrations of the vehicle's state variables. The frequencies and proper control gains are used for the neural network data. During a vehicle running, the trained on-line neural network is activated and provides the proper gains for non-trained frequencies. For the full-state feedback control, Kalman filter observes the full states and Fourier transform is used to detect the frequency of the road.

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