Nonlinear disturbance observer–based adaptive neural control for electro-hydraulic servo system with model uncertainty and full-state constraints

Zhenshuai Wan, Chong Liu, Yu Fu
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Abstract

The electro-hydraulic servo system (EHSS) performs model uncertainty and state constraints such that the exact model-based controller is difficult to be designed. In this work, a nonlinear disturbance observer (NDO)-based adaptive neural control (ANC) is proposed for the EHSS, in which a nonlinear transformation function is constructed to make the state constraints problem transformed into state unconstraint problem. The NDO is introduced to improve the disturbance rejection ability. The ANC is utilized to approximate unmodeled dynamics. The second-order filters are integrated with backstepping control to solve the explosion of complexity. The proposed NDO-based ANC scheme confines all states within the predefined bounds, improves the robustness of closed-loop system, and alleviates the computation burden. Moreover, the stability analysis for the closed-loop system is given within the Lyapunov framework. Simulations and experiments show that the proposed control scheme can achieve excellent control performance and robustness with regard to full-state constraints and model uncertainty.
基于非线性扰动观测器的自适应神经控制,用于具有模型不确定性和全状态约束的电液伺服系统
电液伺服系统(EHSS)具有模型不确定性和状态约束,因此很难设计精确的基于模型的控制器。本研究针对电液伺服系统提出了一种基于非线性扰动观测器(NDO)的自适应神经控制(ANC),其中构建了一个非线性变换函数,使状态约束问题转化为状态非约束问题。引入 NDO 是为了提高干扰抑制能力。利用 ANC 逼近未建模的动力学。二阶滤波器与反步控制相结合,解决了复杂性爆炸的问题。所提出的基于 NDO 的 ANC 方案将所有状态限制在预定义的范围内,提高了闭环系统的鲁棒性,减轻了计算负担。此外,还在 Lyapunov 框架内给出了闭环系统的稳定性分析。仿真和实验表明,所提出的控制方案能在全状态约束和模型不确定性方面实现出色的控制性能和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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