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Adaptive neural network sliding mode control for active suspension systems with electrohydraulic actuator dynamics

机译:具有电液执行器动力学的主动悬架系统的自适应神经网络滑动模式控制

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The object of this article is to design an observer-based adaptive neural network sliding mode controller for active suspension systems. A general nonlinear suspension model is established, and the electrohydraulic actuator dynamics are considered. The proposed controller is decomposed into two loops. Since the dynamics of the actuator is assumed highly nonlinear with uncertainties, the adaptive neural network is presented in the inner loop to ensure the control system robustness against uncertainties, and the self-tuning weighting vector is adjusted online according to the updated law obtained by Lyapunov stability theory. In the outer loop, a model reference sliding mode controller is developed to track the desired states of the hybrid reference model that combines skyhook and groundhook control methods. Besides, to obtain the unmeasured states of the system, an unscented Kalman filter is utilized to provide necessary information for the controller. Simulation results show that the exerted force can be tracked precisely even in the existence of uncertainties. Moreover, the proposed controller can improve the suspension’s performance effectively.
机译:本文的对象是设计用于主动悬架系统的基于观察者的自适应神经网络滑动模式控制器。建立了一般的非线性悬架模型,并且考虑了电液执行器动力学。所提出的控制器分解为两个环。由于致动器的动态被假设具有不确定性的高度非线性,因此在内环中呈现自适应神经网络,以确保控制系统鲁棒性能反对不确定性,并且根据Lyapunov获得的更新法在线调整自调权载体稳定性理论。在外循环中,开发了一种模型参考滑模控制器以跟踪结合Skyhook和Rindowhook控制方法的混合参考模型的所需状态。此外,为了获得系统的未测量状态,利用未加注的卡尔曼滤波器来为控制器提供必要的信息。仿真结果表明,即使在存在不确定性的情况下也可以恰当地跟踪施加的力。此外,所提出的控制器可以有效地提高悬架的性能。

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