Zarshenas Homayoon, Ruddy Bryan P, Kempa-Liehr Andreas W, Besier Thor F
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:4854-4857. doi: 10.1109/EMBC44109.2020.9175376.
A method for ankle torque prediction ahead of the current time is proposed in this paper. The mean average value of EMG signals from four muscles, alongside the joint angle and angular velocity of the right ankle, were used as input parameters to train a time-delayed artificial neural network. Data collected from five healthy subjects were used to generate the dataset to train and test the model. The model predicted ankle torque for five different future times from zero to 2 seconds. Model predictions were compared to torque calculated from inverse dynamics for each subject. The model predicted ankle torque up to 1 second ahead of time with normalized root mean squared error of less than 15 percent while the coefficient of determination was over 0.85.Clinical Relevance- the potential of the model for predicting joint torque ahead of time is helpful to establish an intuitive interaction between human and assistive robots. This model has application to assist patients with neurological disorders.
本文提出了一种提前预测当前时刻踝关节扭矩的方法。来自四块肌肉的肌电信号的平均平均值,以及右踝关节的关节角度和角速度,被用作输入参数来训练一个时延人工神经网络。从五名健康受试者收集的数据用于生成数据集,以训练和测试该模型。该模型预测了从零到2秒的五个不同未来时刻的踝关节扭矩。将模型预测结果与每个受试者通过逆动力学计算得到的扭矩进行比较。该模型能够提前1秒预测踝关节扭矩,归一化均方根误差小于15%,同时决定系数超过0.85。临床相关性——该模型提前预测关节扭矩的潜力有助于在人与辅助机器人之间建立直观的交互。该模型可应用于帮助患有神经疾病的患者。