一类严格反馈时变非线性系统的自适应迭代学习控制器设计

Ling-Yu Li, Haidi Dong, Hai Helen Li, Shengzhi Yuan
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引用次数: 0

摘要

针对一类严格反馈高阶不确定时变非线性系统,设计了一种新的迭代学习控制方案。首先提出了一种新的迭代学习神经网络逼近器(ILNNA)来消除时变不确定性。然后,将复合能量函数(CEF)、鲁棒自适应控制和反演技术相结合,构造了一种同时具有微分和差分更新规律的迭代学习控制机制。该学习控制方案在存在未知时变参数非线性时,保证所有状态变量的$L_{pe}$有界性和输出沿迭代轴的$L_{T}^{2}$收敛,无需Lipschitz连续假设。进行了仿真研究,以说明所提出方案的有效性。
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Adaptive Iterative Learning Controller Design for a Class of Strict-feedback Time-Varying Nonlinear Systems
This paper elaborates the design of a new iterative learning control scheme for a class of strict-feedback high-order uncertain time-varying nonlinear system. A novel iterative learning neural network approximator (ILNNA) is firstly proposed to eliminate the time-varying uncertainties. Then, combining composite energy function (CEF), robust adaptive control and backstepping techniques, a new iterative learning control mechanism with both differential and difference updating laws is constructed. The learning control scheme can warrant a $L_{pe}$ boundedness of all state variables and a $L_{T}^{2}$ convergence of the output along the iteration axis in the presence of unknown time-varying parametric nonlinearities, needless of Lipschitz continuous assumption. Simulation studies are undertaken to illustrate the effectiveness of the proposed scheme.
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