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A Comparative Approach to Hand Force Estimation using Artificial Neural Networks:

机译:使用人工神经网络进行手力估计的比较方法:

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In many applications that include direct human involvement such as control of prosthetic arms, athletic training, and studying muscle physiology, hand force is needed for control, modeling and monitoring purposes. The use of inexpensive and easily portable active electromyography (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. Among non-model-based estimation methods, Multilayer Perceptron Artificial Neural Networks (MLPANN) has widely been used to estimate muscle force or joint torque from different anatomical features in humans or animals. This paper investigates the use of Radial Basis Function (RBF) ANN and MLPANN for force estimation and experimentally compares the performance of the two methodologies for the same human anatomy, ie, hand force estimation, under an ensemble of operational conditions. In this unified study, the EMG signal readings from upper-arm muscles involved in elbow joint movement and elbow angular position and velocity are utilized as inputs to the ANNs. In addition, the use of the elbow angular acceleration signal as an input for the ANNs is also investigated.
机译:在许多包括人类直接参与的应用中,例如假肢的控制,运动训练和研究肌肉生理学,控制,建模和监视目的都需要手力。与通常非常昂贵并且需要笨重的框架的力传感器的使用相比,在这些应用中使用便宜且容易携带的有源肌电(EMG)电极和位置传感器将是有利的。在非基于模型的估计方法中,多层感知器人工神经网络(MLPANN)已被广泛用于根据人或动物的不同解剖特征来估计肌肉力或关节扭矩。本文研究了使用径向基函数(RBF)ANN和MLPANN进行力估计,并实验比较了两种方法在同一人体解剖结构(即手力估计)下在一组操作条件下的性能。在这项统一的研究中,来自肘关节运动以及肘角位置和速度的上臂肌肉的EMG信号读数被用作ANN的输入。此外,还研究了使用弯头角加速度信号作为ANN的输入。

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