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Neural observer-based adaptive compensation control for nonlinear time-varying delays systems with input constraints

机译:具有输入约束的非线性时变时滞系统的基于神经观测器的自适应补偿控制

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摘要

This paper describes a neural network state observer-based adaptive saturation compensation control for a class of time-varying delayed nonlinear systems with input constraints. An advantage of the presented study lies in that the state estimation problem for a class of uncertain systems with time-varying state delays and input saturation nonlinearities is handled by using the NNs learning process strategy, novel type Lyapunov-Krasovskii functional and the adaptive memoryless neural network observer. Furthermore, by utilizing the property of the function tan h~2(v/∈)/v, NNs compensation technique and backstep-ping method, an adaptive output feedback controller is constructed which not only efficiently avoids the problem of controller singularity and input saturation, but also can achieve the output tracking. And the proposed approach is obtained free of any restrictive assumptions on the delayed states and Lispchitz condition for the unknown nonlinear functions. The semiglobal uniform ultimate boundedness of all signals of the closed-loop systems and the convergence of tracking error to a small neighborhood are all rigorously proven based on the NN-basis function property, Lyapunov method and sliding model theory. Finally, two examples are simulated to confirm the effectiveness and applicability of the proposed approach.
机译:本文介绍了一种基于神经网络状态观测器的自适应饱和补偿控制方法,该方法用于一类具有输入约束的时变时滞非线性系统。提出的研究的优点在于,通过使用NNs学习过程策略,新型Lyapunov-Krasovskii函数和自适应无记忆神经网络来处理一类具有时变状态时延和输入饱和非线性的不确定系统的状态估计问题。网络观察者。此外,利用函数tan h〜2(v /ε)/ v的性质,神经网络补偿技术和后推法,构造了一种自适应输出反馈控制器,该控制器不仅有效地避免了控制器奇异性和输入饱和度的问题,还可以实现输出跟踪。所获得的方法不受对未知非线性函数的延迟状态和Lispchitz条件的任何限制性假设的约束。基于NN基函数性质,Lyapunov方法和滑动模型理论,都严格证明了闭环系统所有信号的半全局一致极限有界性和跟踪误差收敛到一个小邻域。最后,通过两个例子进行仿真,以验证该方法的有效性和适用性。

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