Department of Mechanical Engineering, Auburn University, Auburn, AL 36849, USA.
Department of Industrial Engineering, Auburn University, Auburn, AL 36849, USA.
Sensors (Basel). 2021 May 22;21(11):3622. doi: 10.3390/s21113622.
Electromyography (EMG) is commonly used to measure electrical activity of the skeletal muscles. As exoskeleton technology advances, these signals may be used to predict human intent for control purposes. This study used an artificial neural network trained and tested with knee flexion angles and knee muscle EMG signals to predict knee flexion angles during gait at 50, 100, 150, and 200 ms into the future. The hypothesis of this study was that the algorithm's prediction accuracy would only be affected by time into the future, not subject, gender or side, and that as time into the future increased, the prediction accuracy would decrease. A secondary hypothesis was that as the number of algorithm training trials increased, the prediction accuracy of the artificial neural network (ANN) would increase. The results of this study indicate that only time into the future affected the accuracy of knee flexion angle prediction ( < 0.001), whereby greater time resulted in reduced accuracy (0.68 to 4.62 degrees root mean square error (RMSE) from 50 to 200 ms). Additionally, increased number of training trials resulted in increased angle prediction accuracy.
肌电图(EMG)常用于测量骨骼肌的电活动。随着外骨骼技术的进步,这些信号可用于预测人类的意图以进行控制。本研究使用人工神经网络,通过膝关节弯曲角度和膝关节肌肉 EMG 信号进行训练和测试,以预测未来 50、100、150 和 200 毫秒时的膝关节弯曲角度。本研究的假设是,该算法的预测准确性仅受未来时间的影响,不受受试者、性别或侧别影响,而且随着未来时间的增加,预测准确性会降低。次要假设是,随着算法训练试验次数的增加,人工神经网络(ANN)的预测准确性会提高。本研究的结果表明,只有未来时间会影响膝关节弯曲角度预测的准确性(<0.001),随着时间的增加,准确性降低(50 到 200 毫秒时的均方根误差(RMSE)从 0.68 到 4.62 度)。此外,训练试验次数的增加会提高角度预测的准确性。