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Evolutionary algorithm-based PID controller tuning for nonlinear quarter-car electrohydraulic vehicle suspensions

机译:基于进化算法的PID控制器在非线性四轮车电动液压汽车悬架上的调节

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摘要

The basic challenge associated with the design of vehicle suspension system is the attainment of an optimal trade-off between the various design objectives. This study presents the design of proportional-integral-derivative (PID) controller for a quarter-car active vehicle suspension system (AVSS) using evolutionary algorithms (EA) such as the particle swarm optimization (PSO), genetic algorithm (GA) and differential evolution (DE). Each of the EA-based PID controllers showed overall improvement in suspension travel, ride comfort, settling time and road holding from the manually tuned controller and the passive vehicle suspension system. These improvements were, however, achieved at the cost of increased actuator force, power consumption and spool-valve displacement. DE-optimized PID control resulted in the best minimized suspension performance, followed by the GA and PSO, respectively. Frequency-domain analysis showed that all the signals were attenuated within the whole body vibration frequency range and the EA-optimized controllers had RMS frequency weighted body acceleration of the vehicle within allowable limits for vibration exposure. Robustness analysis of the DE-optimized PID-controlled AVSS to model uncertainties is carried out in the form of variation in vehicle sprung mass loading, tyre stiffness and speed.
机译:与车辆悬架系统的设计相关的基本挑战是在各种设计目标之间实现最佳折衷。这项研究提出了使用进化算法(EA)的四分之一汽车主动车辆悬架系统(AVSS)的比例积分微分(PID)控制器,例如粒子群优化(PSO),遗传算法(GA)和微分进化(DE)。每个基于EA的PID控制器均显示出手动调节控制器和被动车辆悬架系统在悬架行程,乘坐舒适性,稳定时间和抓地力方面的总体改善。然而,这些改进是以增加致动器力,功耗和滑阀位移为代价的。 DE优化的PID控制可将悬架性能降至最低,其次是GA和PSO。频域分析表明,所有信号在整个车身振动频率范围内均被衰减,并且经过EA优化的控制器将RMS频率加权的车辆车身加速度控制在允许的振动暴露极限范围内。对DE优化PID控制的AVSS进行鲁棒性分析,以对不确定性进行建模,其形式为车辆弹簧负载,轮胎刚度和速度的变化。

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