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Adaptive Neural Neworks Control for Uncertain Nonlinear State Constrained Systems With Input Delay

机译:具有输入时滞的不确定非线性约束系统的自适应神经网络控制

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In this paper, an adaptive controller is investigated for a class of strict feedback nonlinear state constrained systems with both input delay and unknown control gains. To handle the unknown control gains and prevent constraint violation, we employ the integral Barrier Lyapunov Functions (iBLFs), which reduce some of the conservatism of transforming original state constraints into transformed error constraints. Pade approximation and an intermediate variable are applied to compensate the effect of the input delay. The unknown functions are approximated by Neural networks (NNs). It is proved that tracking error can converge to a compact set of the origin without violating the state constraint, and all closed loop signals remain bounded. The proposed controller can be verified by a numerical example.
机译:本文针对一类具有输入延迟和未知控制增益的严格反馈非线性状态约束系统,研究了一种自适应控制器。为了处理未知的控制增益并防止约束冲突,我们采用了积分屏障李雅普诺夫函数(iBLF),该函数减少了将原始状态约束转换为变换后的误差约束的某些保守性。使用Pade逼近和中间变量来补偿输入延迟的影响。未知函数由神经网络(NN)近似。事实证明,跟踪误差可以收敛到原点的紧凑集合而不会违反状态约束,并且所有闭环信号都保持有界。所提出的控制器可以通过数值示例进行验证。

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