Multi-Objective Optimization-Based Assist-as-Needed Controller for Improved Quality of Assistance in Rehabilitation Robotics.

Kithmi N D Widanage, Zhengguo Sheng, Henglien Lisa Chen, Yanan Li
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Abstract

Assist-as-needed (AAN) is a paradigm in rehabilitation robotics based on the fact that more active participation from human users promotes faster recovery of motor functions. Moreover, the patients and public engaged and involved in our research design stressed that in order to provide safe and patient-friendly assistance, rehabilitation robotics should be equipped with different constraints while giving minimal assistance where required. Most of the current constraint-based AAN methods are only capable of providing position or velocity constraints which limit the quality of assistance that the robotic systems could provide. In this paper, we propose a multi-objective optimization (MOO) based controller which can implement both linear and non-linear constraints to improve the quality of assistance. This MOO-based proposed controller includes not only position and velocity constraints but also a vibration constraint to subside the tremors common in rehabilitation patients. The performance of this controller is compared with a Barrier Lyapunov Function (BLF) based controller with task-space constraints in a simulation. The results indicate that the MOO-based controller behaves similarly to the BLF-based controller in terms of position constraints. It also shows that the MOO-based controller can improve the quality of assistance by constraining the velocity and subsiding the simulated tremors.

基于多目标优化的按需辅助控制器,用于提高康复机器人的辅助质量。
根据需要辅助(AAN)是康复机器人的一种范式,其基础是人类用户更积极的参与可以促进更快的运动功能恢复。此外,参与我们研究设计的患者和公众强调,为了提供安全和对患者友好的帮助,康复机器人应配备不同的约束条件,同时在需要时提供最低限度的帮助。目前大多数基于约束的AAN方法只能提供位置或速度约束,这限制了机器人系统可以提供的辅助质量。在本文中,我们提出了一种基于多目标优化(MOO)的控制器,该控制器可以实现线性和非线性约束,以提高辅助质量。这种基于MOO的控制器不仅包括位置和速度约束,还包括振动约束,以平息康复患者中常见的震颤。在仿真中,将该控制器的性能与具有任务空间约束的基于屏障李雅普诺夫函数(BLF)的控制器进行了比较。结果表明,基于MOO的控制器在位置约束方面与基于BLF的控制器表现相似。研究还表明,基于MOO的控制器可以通过约束速度和抑制模拟震颤来提高辅助质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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