Estimation of Upper Limb Impedance Parameters Using Recursive Least Square Estimator

Zaw Lay Htoon, S. N. Sidek, S. Fatai, M. Rashid
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引用次数: 5

Abstract

For the past decade, researchers have developed rehabilitation robot based-therapy for post-stroke patients which goal is to complement the traditional manual therapy. However, they are still lacking in terms of measuring the human arm's impedance that neurorehabilitation therapist used to estimate before deploying a specific training regime. There are numerous assessment strategies exist to estimate the upper limb impedance parameters and movement ability post-stroke, but most of the strategies are subjective though guided by detailed description and the assessment consequence is qualitative rather than quantitative and objective. Hence, there are still remain challenges to unearth assessment strategy that can measure stroke patients' upper limb impedance parameters in a safe, cost efficient, quantitative, objective and reliable. The paper proposes appropriate mathematical model for a 3-DOF robot-assisted platform for post-stroke rehabilitation that has the ability to estimate the upper-limb mechanical impedance parameters using recursive least square estimator method. Preliminary experimental result shows that the upper-limb impedance parameters can be estimated. Therefore, these acquired outcomes could be useful in the interaction between the robot platform and patient undergoes neurorehabilitation therapy.
基于递推最小二乘估计的上肢阻抗参数估计
在过去的十年里,研究人员开发了基于机器人的中风后患者康复治疗,其目标是补充传统的手工治疗。然而,在测量人体手臂的阻抗方面,他们仍然缺乏神经康复治疗师在部署特定训练方案之前用来估计的方法。目前已有多种评估策略对中风后上肢阻抗参数和运动能力进行评估,但多数评估策略虽有详细的描述指导,但较为主观,评估结果定性不足,缺乏定量和客观。因此,探索一种安全、经济、定量、客观、可靠地测量脑卒中患者上肢阻抗参数的评估策略仍然是一项挑战。本文提出了一种适合的三自由度脑卒中后康复机器人辅助平台的数学模型,该平台能够使用递推最小二乘估计方法估计上肢机械阻抗参数。初步实验结果表明,该方法可以估计出上肢阻抗参数。因此,这些获得的结果在机器人平台和接受神经康复治疗的患者之间的相互作用中是有用的。
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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