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Observer-based adaptive neural tracking control for output-constrained switched MIMO nonstrict-feedback nonlinear systems with unknown dead zone

机译:输出约束交换机的基于观察者的自适应神经跟踪控制,具有未知死区的非线性非线性反馈非线性系统

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In this paper, the issue of adaptive neural tracking control for uncertain switched multi-input multi-output (MIMO) nonstrict-feedback nonlinear systems with average dwell time is studied. The system under consideration includes unknown dead-zone inputs and output constraints. The uncertain nonlinear functions are identified via neural networks. Also, neural networks-based switched observer is constructed to approximate all unmeasurable states. By means of the information for dead-zone slopes and barrier Lyapunov function (BLF), the problems of dead-zone inputs and output constraints are tackled. Furthermore, dynamic surface control (DSC) scheme is employed to ensure that the computation burden is greatly reduced. Then, an observer-based adaptive neural control strategy is developed on the basis of backstepping technique and multiple Lyapunov functions approach. Under the designed controller, all the signals existing in switched closed-loop system are bounded, and system outputs can track the target trajectories within small bounded errors. Finally, the feasibility of the presented control algorithm is proved via simulation results.
机译:本文研究了对平均停留时间的不确定开关多输入多输出(MIMO)非线反馈非线性系统的自适应神经跟踪控制问题。正在考虑的系统包括未知的死区输入和输出约束。不确定的非线性功能通过神经网络识别。此外,构造基于神经网络的交换观察者以近似所有未估量的状态。通过用于死区斜率和屏障Lyapunov函数(BLF)的信息,解决了死区输入和输出约束的问题。此外,采用动态表面控制(DSC)方案来确保计算负担大大降低。然后,基于BackStepping技术和多个Lyapunov功能方法开发了基于观察者的自适应神经控制策略。在设计的控制器下,开关闭环系统中存在的所有信号都是有界的,并且系统输出可以跟踪小界误差内的目标轨迹。最后,通过仿真结果证明了所提出的控制算法的可行性。

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