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Adaptive neural output-feedback control for nonstrict-feedback time-delay fractional-order systems with output constraints and actuator nonlinearities

机译:具有输出约束和执行器非线性的非触控反馈时间延迟分数阶系统的自适应神经输出 - 反馈控制

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This study addresses theissueof the adaptive output tracking control for a category of uncertain nonstrict-feedback delayed incommensurate fractional-order systems in the presence of nonaffine structures, unmeasured pseudo-states, unknown control directions, unknown actuator nonlinearities and output constraints. Firstly, the mean value theorem and the Gaussian error function are introduced to eliminate the difficulties that arise from the nonaffine structures and the unknown actuator nonlinearities, respectively. Secondly, the immeasurable tracking error variables are suitably estimated by constructing a fractional-order linear observer. Thirdly, the neural network, the Razumikhin Lemma, the variable separation approach, and the smooth Nussbaum-type function are used to deal with the uncertain nonlinear dynamics, the unknown time-varying delays, the nonstrict feedback and the unknown control directions, respectively. Fourthly, asymmetric barrier Lyapunov functions are employed to overcome the violation of the output constraints and to tune online the parameters of the adaptive neural controller. Through rigorous analysis, it is proved that the boundedness of all variables in the closed-loop system and the semi global asymptotic tracking are ensured without transgression of the constraints. The principal contributions of this study can be summarized as follows: (1) based on Caputo’s definitions and new lemmas, methods concerning the controllability, observability and stability analysis of integer-order systems are extended to fractional-order ones, (2) the output tracking objective for a relatively large class of uncertain systems is achieved with a simple controller and less tuning parameters. Finally, computer-simulation studies from the robotic field are given to demonstrate the effectiveness of the proposed controller.
机译:本研究解决了在非共发粉结构的存在下,不确定的非克测反馈延迟不确定的分数阶系统,未测量的伪状态,未知的控制方向,未知的致动器非线性和输出约束,该研究解决了适应性输出跟踪控制的自适应输出跟踪控制。首先,引入平均值定理和高斯误差功能,以消除非共聚合结构和未知致动器非线性产生的困难。其次,通过构造分数级线性观测器来适当地估计不可估量的跟踪误差变量。第三,神经网络,Razumikhin引理,可变分离方法和平滑的Nussbaum型功能用于处理不确定的非线性动力学,分别未知的时变延迟,非延迟反馈和未知控制方向。第四,采用非对称屏障Lyapunov函数来克服输出约束的违反,并在线调谐自适应神经控制器的参数。通过严格的分析,证明了闭环系统中的所有变量的有界和半全局渐近跟踪的界限无需违反约束。本研究的主要捐款可以概括如下:(1)基于Caputo的定义和新的LEMMA,关于整数系统的可控性,可观察性和稳定性分析的方法扩展到分数阶,(2)输出通过简单的控制器和较少的调谐参数,实现了对相对大类的不确定系统进行跟踪目标。最后,给出了机器人领域的计算机模拟研究证明了所提出的控制器的有效性。

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