Vibration control enhancement in a full vehicle dynamic model by optimization of the controller’s gain parameters

Author:

Pereira Leonardo Valero,Paucar Casas Walter Jesus,Gomes Herbert MartinsORCID,Drehmer Luis Roberto Centeno,Cesconeto Emanuel Moutinho

Abstract

Purpose In this paper, improvements in reducing transmitted accelerations in a full vehicle are obtained by optimizing the gain parameters of an active control in a roughness road profile.Design/methodology/approach For a classically designed linear quadratic regulator (LQR) control, the vibration attenuation performance will depend on weighting matrices Q and R. A methodology is proposed in this work to determine the optimal elements of these matrices by using a genetic algorithm method to get enhanced controller performance. The active control is implemented in an eight degrees of freedom (8-DOF) vehicle suspension model, subjected to a standard ISO road profile. The control performance is compared against a controlled system with few Q and R parameters, an active system without optimized gain matrices, and an optimized passive system.Findings The control with 12 optimized parameters for Q and R provided the best vibration attenuation, reducing significantly the Root Mean Square (RMS) accelerations at the driver’s seat and car body.Research limitations/implications The research has positive implications in a wide class of active control systems, especially those based on a LQR, which was verified by the multibody dynamic systems tested in the paper.Practical implications Better active control gains can be devised to improve performance in vibration attenuation.Originality/value The main contribution proposed in this work is the improvement of the Q and R parameters simultaneously, in a full 8-DOF vehicle model, which minimizes the driver’s seat acceleration and, at the same time, guarantees vehicle safety.

Publisher

Emerald

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