Mobasser Farid, Eklund J Mikael, Hashtrudi-Zaad Keyvan
Invenium Technologies Corp., Toronto, ON M2N 6K1, Canada.
IEEE Trans Biomed Eng. 2007 Apr;54(4):683-93. doi: 10.1109/TBME.2006.889190.
In many studies and applications that include direct human involvement-such as human-robot interaction, control of prosthetic arms, and human factor studies-hand force is needed for monitoring or control purposes. The use of inexpensive and easily portable active electromyogram (EMG) electrodes and position sensors would be advantageous in these applications compared to the use of force sensors, which are often very expensive and require bulky frames. Multilayer perceptron artificial neural networks (MLPANN) have been used commonly in the literature to model the relationship between surface EMG signals and muscle or limb forces for different anatomies. This paper investigates the use of fast orthogonal search (FOS), a time-domain method for rapid nonlinear system identification, for elbow-induced wrist force estimation. It further compares the forces estimated using FOS with the forces estimated by MLPANN for the same human anatomy under an ensemble of operational conditions. In this paper, the EMG signal readings from upper arm muscles involved in elbow joint movement and sensed elbow angular position and velocity are utilized as inputs. A single degree-of-freedom robotic experimental testbed has been constructed and used for data collection, training and validation.
在许多包含直接人类参与的研究和应用中,例如人机交互、假肢手臂控制以及人体因素研究,出于监测或控制目的需要手部力量。与通常非常昂贵且需要庞大框架的力传感器相比,使用廉价且易于携带的有源肌电图(EMG)电极和位置传感器在这些应用中具有优势。多层感知器人工神经网络(MLPANN)在文献中已被普遍用于对不同解剖结构的表面肌电信号与肌肉或肢体力量之间的关系进行建模。本文研究了快速正交搜索(FOS)这种用于快速非线性系统辨识的时域方法在估计肘部引起的腕部力量方面的应用。它还在一组操作条件下,将使用FOS估计的力与针对相同人体解剖结构由MLPANN估计的力进行了比较。在本文中,来自参与肘关节运动的上臂肌肉的肌电信号读数以及感测到的肘部角度位置和速度被用作输入。构建了一个单自由度机器人实验测试平台,并用于数据收集、训练和验证。