A novel adaptive neural sliding mode control for systems with unknown dynamics

H. Modares, A. Rowhanimanesh, A. Karimpour
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引用次数: 4

Abstract

In this paper, an adaptive neural sliding mode controller (ANSMC) is proposed as an asymptotically stable robust controller for a class of Control Affine Nonlinear Systems (CANSs) with unknown dynamics. In the proposed method a Control Affine Radial Basis function Network (CARBFN) is developed for online identification of CANSs. A recursive algorithm based on Extended Kalman Filter (EKF) is used for training of CARBFN to develop an adaptive model for CANSs with unknown and uncertain system dynamics to reduce the uncertainties to low values. Since the CARBFN model learns the system time-varying dynamics online, the ANSMC will compute an efficient control input adaptively. Due to high degree of robustness, the proposed controller can be widely used in real world applications. To demonstrate this efficiency, a robust control system is successfully designed for a chaotic Duffing forced oscillator system in the presence of unknown dynamics as well as the unknown oscillation disturbance which is not available for measurement
一种新的未知动态系统自适应神经滑模控制方法
针对一类具有未知动态特性的仿射非线性系统,提出了一种自适应神经滑模控制器(ANSMC)作为渐近稳定鲁棒控制器。提出了一种基于控制仿射径向基函数网络(CARBFN)的cans在线辨识方法。采用基于扩展卡尔曼滤波(EKF)的递归算法对CARBFN进行训练,建立了未知不确定系统动力学的CANSs自适应模型,将不确定性降至较低。由于CARBFN模型在线学习系统时变动力学,ANSMC将自适应计算有效的控制输入。由于该控制器具有高度的鲁棒性,可以广泛应用于实际应用。为了证明这种效率,成功地设计了一种鲁棒控制系统,用于存在未知动力学和未知振荡干扰的混沌Duffing强迫振荡器系统
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