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首页> 外文期刊>Industrial Electronics, IEEE Transactions on >Event-Triggered Optimal Control for Partially Unknown Constrained-Input Systems via Adaptive Dynamic Programming
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Event-Triggered Optimal Control for Partially Unknown Constrained-Input Systems via Adaptive Dynamic Programming

机译:通过自适应动态规划对部分未知约束输入系统进行事件触发的最优控制

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摘要

Event-triggered control has been an effective tool in dealing with problems with finite communication and computation resources. In this paper, we design an event-triggered control for nonlinear constrained-input continuous-time systems based on the optimal policy. Constraints on controls are handled using a bounded function. To learn the optimal solution with partially unknown dynamics, an online adaptive dynamic programming algorithm is proposed. The identifier network, the critic network, and the actor network are employed to approximate the unknown drift dynamics, the optimal value, and the optimal policy, respectively. The identifier is tuned based on online data, which further trains the critic and actor at triggering instants. A concurrent learning technique repeatedly uses past data to train the critic. Stability of the closed-loop system, and convergence of neural networks to the optimal solutions are proved by Lyapunov analysis. In the end, the algorithm is applied to the overhead crane system to observe the performance. The event-triggered optimal controller with constraints stabilizes the system and consumes much less sampling times.
机译:事件触发的控制已成为解决有限通信和计算资源问题的有效工具。在本文中,我们基于最优策略设计了一个非线性约束输入连续时间系统的事件触发控制。控件上的约束使用有界函数处理。为了学习部分未知动力学的最优解,提出了一种在线自适应动态规划算法。使用标识符网络,评论者网络和参与者网络分别估计未知的漂移动力学,最优值和最优策略。标识符基于在线数据进行调整,从而进一步在触发时刻训练评论家和演员。并行学习技术反复使用过去的数据来训练评论家。 Lyapunov分析证明了闭环系统的稳定性以及神经网络收敛于最优解的能力。最后,将该算法应用于高架起重机系统,观察其性能。具有约束的事件触发的最优控制器可以稳定系统,并减少采样时间。

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