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Reinforcement learning-based robust adaptive tracking control for multi-wheeled mobile robots synchronization with optimality

机译:基于强化学习的鲁棒自适应跟踪控制,用于多轮移动机器人的最优同步

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This paper proposes a new method based on reinforcement learning to design robust adaptive tracking control laws with optimality for multi-wheeled mobile robots synchronization in communication graph without requiring knowledge of drift tracking terms in node dynamics. Wheeled mobile robots are controlled by integrated kinematic and dynamic laws. Actor critic structures in the control scheme for every node is proposed such as only single NN is used to reduce computational cost and storage resources, but parameters of critic and actors are updated synchronously. Novel tuning laws for the NNs are designed not only to learn online adaptive solutions of cooperative Hamilton-Jacobi-Isaacs (HJI) equation on purpose of approximating optimal cooperative tracking performance index functions and robust direct adaptive tracking control inputs as well as worst case disturbances but also to guarantee closed-loop stability in real-time. The convergence and stability of the overall system are proven by Lyapunov techniques. The simulation results on multi-wheeled mobile robots systems verify the effectiveness of the proposed controller.
机译:本文提出了一种基于强化学习的新方法,该方法可以设计出鲁棒的自适应跟踪控制律,从而使多轮移动机器人在通信图中实现同步,而无需了解节点动力学中的漂移跟踪项。轮式移动机器人由集成的运动和动态定律控制。提出了针对每个节点的控制方案中的Actor评论者结构,例如仅使用单个NN来减少计算成本和存储资源,但是评论者和Actor的参数是同步更新的。针对NN的新型调整律不仅旨在学习在线汉密尔顿-雅各比-艾萨斯(HJI)协作方程的自适应解决方案,目的是逼近最佳协作跟踪性能指标函数和鲁棒的直接自适应跟踪控制输入以及最坏情况的干扰,而且还可以保证实时的闭环稳定性。 Lyapunov技术证明了整个系统的收敛性和稳定性。在多轮移动机器人系统上的仿真结果验证了所提出控制器的有效性。

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