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Constrained online optimal control for continuous-time nonlinear systems using neuro-dynamic programming

机译:基于神经动力学程序的连续时间非线性系统的约束在线最优控制

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This paper develops an online adaptive optimal control scheme to solve the infinite-horizon optimal control problem of continuous-time nonlinear systems with control constraints. A novel architecture is presented to approximate the Hamilton-Jacobi-Bellman equation. That is, only a critic neural network is used to derive the optimal control instead of typical action-critic dual networks employed in neuro-dynamic programming methods. Meanwhile, unlike existing tuning laws for the critic, the newly developed critic update rule not only ensures convergence of the critic to the optimal control but also guarantees the closed-loop system to be uniformly ultimately bounded. In addition, no initial stabilizing control is required. Finally, an example is provided to verify the effectiveness of the present approach.
机译:本文提出了一种在线自适应最优控制方案,以解决具有控制约束的连续时间非线性系统的无限水平最优控制问题。提出了一种新颖的体系结构来近似汉密尔顿-雅各比-贝尔曼方程。即,仅使用评论者神经网络来推导最佳控制,而不是使用神经动力学编程方法中的典型动作评论对偶网络。同时,与现有的评论器调整规则不同,新开发的评论器更新规则不仅可以确保评论器收敛到最佳控制,还可以确保闭环系统最终统一受约束。另外,不需要初始稳定控制。最后,提供一个示例来验证本方法的有效性。

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