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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Event-Triggered Adaptive Dynamic Programming for Continuous-Time Systems With Control Constraints
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Event-Triggered Adaptive Dynamic Programming for Continuous-Time Systems With Control Constraints

机译:具有控制约束的连续时间系统的事件触发自适应动态规划

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In this paper, an event-triggered near optimal control structure is developed for nonlinear continuous-time systems with control constraints. Due to the saturating actuators, a nonquadratic cost function is introduced and the Hamilton–Jacobi–Bellman (HJB) equation for constrained nonlinear continuous-time systems is formulated. In order to solve the HJB equation, an actor-critic framework is presented. The critic network is used to approximate the cost function and the action network is used to estimate the optimal control law. In addition, in the proposed method, the control signal is transmitted in an aperiodic manner to reduce the computational and the transmission cost. Both the networks are only updated at the trigger instants decided by the event-triggered condition. Detailed Lyapunov analysis is provided to guarantee that the closed-loop event-triggered system is ultimately bounded. Three case studies are used to demonstrate the effectiveness of the proposed method.
机译:本文针对具有控制约束的非线性连续时间系统,开发了一种事件触发的近似最优控制结构。由于执行器饱和,引入了非二次成本函数,并为约束的非线性连续时间系统建立了Hamilton–Jacobi–Bellman(HJB)方程。为了解决HJB方程,提出了一个行为者批评框架。评论家网络用于估计成本函数,而行动网络用于估计最优控制律。另外,在所提出的方法中,以非周期性的方式发送控制信号以减少计算和传输成本。这两个网络仅在事件触发条件决定的触发时刻更新。提供了详细的Lyapunov分析,以确保闭环事件触发系统最终有界。通过三个案例研究来证明所提出方法的有效性。

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