Automatically configuring a robotic prosthesis to fit its user's needs and physical conditions is a great technical challenge and a roadblock to the adoption of the technology. Previously, we have successfully developed reinforcement learning (RL) solutions toward addressing this issue. Yet, our designs were based on using a subjectively prescribed target motion profile for the robotic knee during level ground walking. This is not realistic for different users and for different locomotion tasks. In this study for the first time, we investigated the feasibility of RL enabled automatic configuration of impedance parameter settings for a robotic knee to mimic the intact knee motion in a co-adapting environment. We successfully achieved such tracking control by an online policy iteration. We demonstrated our results in both OpenSim simulations and two able-bodied (AB) subjects.
翻译:自动配置机器人假肢以适应用户的需求和物理条件是巨大的技术挑战,也是采用该技术的障碍。以前,我们成功地开发了解决这一问题的强化学习(RL)解决方案。然而,我们的设计是基于在地面水平行走时对机器人膝盖使用主观指定的定向动作配置。这对于不同的用户和不同的移动任务来说是不现实的。在这项研究中,我们第一次调查了RL使阻碍参数设置自动配置的可行性,以便机器人膝盖在共同适应的环境中模仿完整的膝盖运动。我们通过在线政策迭代成功地实现了这种跟踪控制。我们在OpenSim模拟和两个健全(AB)科目上展示了我们的结果。