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Determining the Online Measurable Input Variables in Human Joint Moment Intelligent Prediction Based on the Hill Muscle Model

机译:基于希尔肌肉模型的人体关节矩智能预测中在线可测量输入变量的确定

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摘要

: Human joint moment is a critical parameter to rehabilitation assessment and human-robot interaction, which can be predicted using an artificial neural network (ANN) model. However, challenge remains as lack of an effective approach to determining the input variables for the ANN model in joint moment prediction, which determines the number of input sensors and the complexity of prediction. : To address this research gap, this study develops a mathematical model based on the Hill muscle model to determining the online input variables of the ANN for the prediction of joint moments. In this method, the muscle activation, muscle-tendon moment velocity and length in the Hill muscle model and muscle-tendon moment arm are translated to the online measurable variables, i.e., muscle electromyography (EMG), joint angles and angular velocities of the muscle span. To test the predictive ability of these input variables, an ANN model is designed and trained to predict joint moments. The ANN model with the online measurable input variables is tested on the experimental data collected from ten healthy subjects running with the speeds of 2, 3, 4 and 5 m/s on a treadmill. The variance accounted for (VAF) between the predicted and inverse dynamics moment is used to evaluate the prediction accuracy. : The results suggested that the method can predict joint moments with a higher accuracy (mean VAF = 89.67±5.56 %) than those obtained by using other joint angles and angular velocities as inputs (mean VAF = 86.27±6.6%) evaluated by jack-knife cross-validation. : The proposed method provides us with a powerful tool to predict joint moment based on online measurable variables, which establishes the theoretical basis for optimizing the input sensors and detection complexity of the prediction system. It may facilitate the research on exoskeleton robot control and real-time gait analysis in motor rehabilitation.
机译::人体关节力矩是康复评估和人机交互的关键参数,可以使用人工神经网络(ANN)模型进行预测。然而,仍然存在挑战,因为缺乏在关节力矩预测中确定ANN模型的输入变量的有效方法,该方法确定了输入传感器的数量和预测的复杂性。 :为了解决这一研究空白,本研究开发了一种基于Hill肌肉模型的数学模型,以确定用于预测关节力矩的ANN的在线输入变量。在这种方法中,将希尔肌肉模型和肌腱力矩臂中的肌肉激活,肌腱力矩速度和长度转换为在线可测量变量,即肌肉肌电图(EMG),关节角度和角速度跨度。为了测试这些输入变量的预测能力,设计并训练了ANN模型来预测关节力矩。具有在线可测量输入变量的ANN模型在从跑步机上以10、2、3、4和5 m / s的速度运行的十名健康受试者的实验数据上进行了测试。预测和逆动力学力矩之间的差异(VAF)用于评估预测精度。 :结果表明,该方法比用其他千斤顶评估的其他关节角度和角速度作为输入(平均VAF = 86.27±6.6%)获得的精度更高(准确的VAF = 89.67±5.56%)。刀交叉验证。 :提出的方法为我们提供了一个基于在线可测量变量来预测关节力矩的强大工具,从而为优化输入传感器和预测系统的检测复杂度奠定了理论基础。它可能有助于研究外骨骼机器人控制和运动康复中的实时步态分析。

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