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Output-Feedback Based Simplified Optimized Backstepping Control for Strict-Feedback Systems with Input and State Constraints

机译:基于输出反馈的简化优化的反馈系统,具有输入和状态约束的严格反馈系统

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摘要

In this paper,an adaptive neural-network(NN)output feedback optimal control problem is studied for a class of strict-feedback nonlinear systems with unknown internal dynamics,input saturation and state constraints.Neural networks are used to approximate unknown internal dynamics and an adaptive NN state observer is developed to estimate immeasurable states.Under the framework of the backstepping design,by employing the actor-critic architecture and constructing the tan-type Barrier Lyapunov function(BLF),the virtual and actual optimal controllers are developed.In order to accomplish optimal control effectively,a simplified reinforcement learning(RL)algorithm is designed by deriving the updating laws from the negative gradient of a simple positive function,instead of employing existing optimal control methods.In addition,to ensure that all the signals in the closed-loop system are bounded and the output can follow the reference signal within a bounded error,all state variables are confined within their compact sets all times.Finally,a simulation example is given to illustrate the effectiveness of the proposed control strategy.
机译:本文研究了一个自适应神经网络(NN)输出反馈最优控制问题,用于一类具有未知内部动态的严格反馈非线性系统,输入饱和度和状态约束。网球网络用于近似未知的内部动态和一个开发自适应NN状态观察者以估计无法估量的状态。在BackStepping设计的框架下,通过采用演员 - 评论家架构和构建Tan型障碍Lyapunov函数(BLF),制定了虚拟和实际最佳控制器。为了有效地完成最佳控制,通过从简单的正函数的负梯度导出更新的法律而不是采用现有的最优控制方法来设计一个简化的加强学习(RL)算法。此外,请确保所有信号闭环系统被界限,输出可以遵循界限错误内的参考信号,所有状态变量都是confi在它们的紧凑型集中始终。最后,给出了模拟示例来说明所提出的控制策略的有效性。

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