This paper proposes an advanced position-tracking control approach, referred to as an integrated intelligent nonlinear controller, for a pneumatic artificial muscle (PAM) system. Due to the existence of uncertain, unknown, and nonlinear terms in the system dynamics, it is difficult to derive an exact mathematical model with robust control performance. To overcome this problem, the main contributions of this paper are as follows. To actively represent the behavior of the PAM system using a grey-box model, neural networks are employed as equivalent internal dynamics of the system model and optimized online by a Lyapunov-based method. To realize the control objective by effectively compensating for the estimation error, an advanced robust controller is developed from the integration of the designed networks, and improvement of the sliding mode and backstepping techniques. The convergences of both the developed model and the closed-loop control system are guaranteed by Lyapunov functions. As a result, the overall control approach is capable of ensuring the system's performance with fast response, high accuracy, and robustness. Real-time experiments are carried out in a PAM system under different conditions to validate the effectiveness of the proposed method.ud
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机译:本文提出了一种先进的位置跟踪控制方法,称为气动智能肌肉(PAM)系统的集成智能非线性控制器。由于系统动力学中存在不确定,未知和非线性项,因此难以获得具有鲁棒控制性能的精确数学模型。为了克服这个问题,本文的主要贡献如下。为了使用灰箱模型主动表示PAM系统的行为,神经网络被用作系统模型的等效内部动力学,并通过基于Lyapunov的方法进行了在线优化。为了通过有效地补偿估计误差来实现控制目标,通过设计网络的集成以及滑模和后推技术的改进,开发了一种先进的鲁棒控制器。 Lyapunov函数可确保所开发模型与闭环控制系统的收敛性。结果,总体控制方法能够以快速响应,高精度和鲁棒性确保系统性能。在PAM系统中的不同条件下进行了实时实验,以验证所提出方法的有效性。 ud
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