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Direct adaptive control of a flexible robot using reinforcement learning

机译:使用加强学习的灵活机器人直接控制

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This paper proposes a new adaptive control using the concept of reinforcement learning to address adaptivity for varied payload conditions for a two-link flexible manipulator (TLFM). The application of reinforcement learning has been implemented using a method called adaptive dynamic programming. Decentralized controllers for the decoupled system have been also designed using LQR technique. Then the reinforcement learning is used to tune the gains of the optimal control to adapt in terms of different payload to the manipulator end effecter. Simulation results show that proposed controller provides better end point tracking then LQR fixed gain controller.
机译:本文采用了一种新的自适应控制,使用加固学习的概念来解决两个链路灵活机械手(TLFM)的各种有效载荷条件的适应性。使用称为自适应动态编程的方法实现了增强学习的应用。用于解耦系统的分散控制器也使用LQR技术设计。然后,增强学习用于调整最佳控制的增益,以便在不同的有效载荷方面适应机械手终效果。仿真结果表明,所提出的控制器提供更好的端点跟踪,然后是LQR固定增益控制器。

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