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Estimation of impedance control parameters with artificial neural networks for variable robotic resistive therapy

机译:人工神经网络用于可变电阻抗治疗的阻抗控制参数估计

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The aim of this study is to improve the modeling of physiotherapist behaviors on therapy. In order to contribute to a more consistent therapy of the rehabilitation robots used for lower limb, it was aimed that the rehabilitation applications would be made by considering also patient physical information. At this point, the control algorithm of the therapy by means of impedance control has been extended by evaluation of patient physical information can be grouped as weight and length of patient body in addition to force and position (angle) knowledge. The control algorithm using patient physical information as an input was developed by the method of Artificial Neural Networks (ANN) and the architecture of ANN written as multi-layer perceptron (MLP). Also, back propagation learning method is used to train the ANN. The control algorithm computes the impedance parameters by estimating. The proposed method generated successful results in terms of parameter estimation. The obtained results are sufficient for modeling the movements of physiotherapist.
机译:这项研究的目的是改善物理治疗师行为在治疗上的建模。为了有助于对下肢康复机器人进行更一致的治疗,其目的是通过考虑患者的身体信息来进行康复应用。在这一点上,通过对患者身体信息的评估,扩展了通过阻抗控制进行治疗的控制算法,除了对力和位置(角度)的了解外,还可以将患者的身体重量和长度分组。通过人工神经网络(ANN)的方法和以多层感知器(MLP)编写的ANN架构,开发了以患者身体信息为输入的控制算法。而且,反向传播学习方法用于训练ANN。控制算法通过估算来计算阻抗参数。所提出的方法在参数估计方面产生了成功的结果。所获得的结果足以模拟物理治疗师的动作。

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