Impedance estimation of a pneumatic muscle as a mechanical transmission and actuation device

Prem Kumar Prasad, Soumen Sen, S. N. Shome, Chandan Har
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Abstract

Human friendly robots and devices like exoskeletons, active prostheses etc. are required to be compliant in their actuation system; here the transmissions are deliberately made flexible. This flexibility demands variability in order to improve upon the transmission bandwidth, as well as meeting specific requirements in task execution. Pneumatic Muscle Actuator (PMA) has an inherent ability to vary impedance of transmission in its actuation with varying pressure, resembling a biological muscle, when implemented in agonist-antagonistic arrangement. Regulation and control for stiffness/impedance requires knowledge of the impedance values; however, there is no transducer available to measure the impedance components. In this paper the issue of online estimation of impedance components of a pneumatic muscle actuator is addressed in terms of effective inertia, damping rate and stiffness of the elastic muscle. Devising a model free estimator is indeed difficult, especially in steady state. The present approach considers a physical model of the Pneumatic Artificial Muscle (PAM), suitable for practical implementation and in the same time detailed enough representing, as far as possible, all important behaviors (relating muscle force with displacement/contraction, muscle velocity and muscle pressure). Sensors with noise and varying behavior of passive components with time (and environment) can provide only approximate calibration with inconsistent and not-so-stable results. Online estimation becomes necessary here. This article proposes a first order Extended Kalman Filtering technique to estimate online the impedance parameters. Experimental results are presented to validate the proposed estimation algorithm.
作为机械传动和驱动装置的气动肌肉的阻抗估计
对人类友好的机器人和设备,如外骨骼、主动假肢等,要求其驱动系统符合要求;在这里,变速器被故意设计得很灵活。这种灵活性需要可变性,以提高传输带宽,以及满足任务执行中的特定要求。气动肌肉致动器(PMA)具有固有的能力,在不同的压力下改变其驱动的传输阻抗,类似于生物肌肉,当以激动-拮抗方式实施时。刚度/阻抗的调节和控制需要了解阻抗值;然而,没有可用的传感器来测量阻抗成分。本文从弹性肌肉的有效惯量、阻尼率和刚度三个方面研究了气动肌肉作动器阻抗分量的在线估计问题。设计一个无模型估计器确实是困难的,特别是在稳定状态下。目前的方法考虑了气动人工肌肉(PAM)的物理模型,适合于实际实施,同时尽可能详细地表示所有重要行为(与位移/收缩,肌肉速度和肌肉压力相关的肌肉力)。具有噪声和无源元件随时间(和环境)变化行为的传感器只能提供近似校准,结果不一致且不太稳定。在线评估在这里是必要的。本文提出了一阶扩展卡尔曼滤波技术,用于在线估计阻抗参数。实验结果验证了所提出的估计算法。
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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