| Literature DB >> 22081795 |
Philip S Thomas1, Michael Branicky, Antonie van den Bogert, Kathleen Jagodnik.
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 Reinforcement Learning to create a controller that can adapt to these changing dynamics of a human arm. Development and tests were done in simulation using a two-dimensional arm model and Hill-based muscle dynamics. An actor-critic architecture is used with artificial neural networks for both the actor and the critic. 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.Entities:
Year: 2008 PMID: 22081795 PMCID: PMC3212874
Source DB: PubMed Journal: Yale Workshop Adapt Learn Syst