School of Mechatronics Engineering, Harbin Institute of Technology, Harbin 150000, China.
School of Computer Science and Technology, Harbin Institute of Technology, Harbin 150000, China.
Sensors (Basel). 2021 Apr 20;21(8):2882. doi: 10.3390/s21082882.
Accurate and reliable motion intention perception and prediction are keys to the exoskeleton control system. In this paper, a motion intention prediction algorithm based on sEMG signal is proposed to predict joint angle and heel strike time in advance. To ensure the accuracy and reliability of the prediction algorithm, the proposed method designs the sEMG feature extraction network and the online adaptation network. The feature extraction utilizes the convolution autoencoder network combined with muscle synergy characteristics to get the high-compression sEMG feature to aid motion prediction. The adaptation network ensures the proposed prediction method can still maintain a certain prediction accuracy even the sEMG signals distribution changes by adjusting some parameters of the feature extraction network and the prediction network online. Ten subjects were recruited to collect surface EMG data from nine muscles on the treadmill. The proposed prediction algorithm can predict the knee angle 101.25 ms in advance with 2.36 degrees accuracy. The proposed prediction algorithm also can predict the occurrence time of initial contact 236±9 ms in advance. Meanwhile, the proposed feature extraction method can achieve 90.71±3.42% accuracy of sEMG reconstruction and can guarantee 73.70±5.01% accuracy even when the distribution of sEMG is changed without any adjustment. The online adaptation network enhances the accuracy of sEMG reconstruction of CAE to 87.65±3.83% and decreases the angle prediction error from 4.03∘ to 2.36∘. The proposed method achieves effective motion prediction in advance and alleviates the influence caused by the non-stationary of sEMG.
准确可靠的运动意图感知和预测是外骨骼控制系统的关键。本文提出了一种基于表面肌电信号的运动意图预测算法,用于提前预测关节角度和脚跟触地时间。为了确保预测算法的准确性和可靠性,该方法设计了表面肌电特征提取网络和在线自适应网络。特征提取利用卷积自动编码器网络结合肌肉协同特性,获取高压缩的表面肌电特征,辅助运动预测。自适应网络确保即使表面肌电信号分布发生变化,通过在线调整特征提取网络和预测网络的某些参数,该预测方法仍能保持一定的预测精度。十位受试者被招募在跑步机上采集九个肌肉的表面肌电数据。所提出的预测算法可以提前 101.25ms 以 2.36 度的精度预测膝关节角度。所提出的预测算法还可以提前 236±9ms 预测初始接触的发生时间。同时,所提出的特征提取方法可以实现表面肌电重建的 90.71±3.42%的准确率,即使在没有任何调整的情况下表面肌电分布发生变化,也可以保证 73.70±5.01%的准确率。在线自适应网络将 CAE 的表面肌电重建精度提高到 87.65±3.83%,并将角度预测误差从 4.03∘降低到 2.36∘。该方法实现了有效的运动预测提前,缓解了表面肌电非平稳性带来的影响。