Application of the Actor-Critic Architecture to Functional Electrical Stimulation Control of a Human Arm.

Philip Thomas, Michael Branicky, Antonie van den Bogert, Kathleen Jagodnik
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Abstract

Clinical tests have shown that the dynamics of a human arm, controlled using Functional Electrical Stimulation (FES), can vary significantly between and during trials. In this paper, we study the application of the actor-critic architecture, with neural networks for the both the actor and the critic, as a controller that can adapt to these changing dynamics of a human arm. Development and tests were done in simulation using a planar arm model and Hill-based muscle dynamics. We begin by training it using a Proportional Derivative (PD) controller as a supervisor. We then make clinically relevant changes to the dynamics of the arm and test the actor-critic's ability to adapt without supervision in a reasonable number of episodes. Finally, we devise methods for achieving both rapid learning and long-term stability.

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Actor-Critic架构在人体手臂功能性电刺激控制中的应用。
临床试验表明,使用功能性电刺激(FES)控制的人体手臂的动力学在试验之间和试验期间会发生显著变化。在本文中,我们研究了演员-评论家体系结构的应用,演员和评论家都使用神经网络作为控制器,可以适应人类手臂的这些变化动态。利用平面臂模型和基于hill的肌肉动力学进行了仿真开发和测试。我们首先使用比例导数(PD)控制器作为监督来训练它。然后,我们对手臂的动力学进行临床相关的改变,并在合理数量的情节中测试演员评论家在没有监督的情况下的适应能力。最后,我们设计了实现快速学习和长期稳定的方法。
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