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Implementation of an embodied general reinforcement learner on a serial link manipulator

机译:具体的通用强化学习器在串行链接操纵器上的实现

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BECCA (a Brain-Emulating Cognition and Control Architecture software package) was developed in order to perform general reinforcement learning, that is, to enable unmodeled embodied systems operating in unstructured environments to perform unfamiliar tasks. It accomplishes this through automatic paired feature creation and reinforcement learning algorithms. This paper describes an implementation of BECCA on a seven Degree of Freedom (DoF) Barrett Whole Arm Manipulator (WAM) undergoing a series of experiments designed to test the reinforcement learner's ability to adapt to the WAM hardware. In the experiments, the following is demonstrated, 1) learning to transition the WAM between states, 2) learning to perform at near optimal levels on one, two and three dimensional navigation tasks, 3) applying learning in simulation to hardware performance, 4) learning under inconsistent, human-generated reward, and 5) combining the reinforcement learner with Probabilistic Roadmap Methods (PRM) to improve scalability. The goal of the paper is to demonstrate both the scalability of the BECCA reinforcement learning approach using different formulations of the state space and to show the approach in this paper operating on complex physical hardware.
机译:Becca(脑仿真认知和控制架构软件包)是开发的,以便进行一般加强学习,即,能够在非结构化环境中运行的未铭刻的体现系统来执行不熟悉的任务。它通过自动配对的功能创建和强化学习算法来完成这一点。本文介绍了七大自由(DOF)Barrett全臂机械手(WAM)的一系列实验,介绍了一系列实验,旨在测试强化学习者适应WAM硬件的能力。在实验中,下面进行了描述,1)学习在状态之间转换众议员,2)学习在近最佳水平上进行一,二维和三维导航任务,3)在模拟中应用学习,以硬件性能,4)在不一致,人类生成的奖励和5)下学习加强学习者用概率散系方法(PRM)来提高可扩展性。本文的目的是展示使用国家空间的不同配方的BECCA加强学习方法的可扩展性,并在本文中以复杂的物理硬件运行的方法。

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