Luh J J, Chang G C, Cheng C K, Lai J S, Kuo T S
Department of Electrical Engineering, National Taiwan University, Taipei, Republic of China.
J Electromyogr Kinesiol. 1999 Jun;9(3):173-83. doi: 10.1016/s1050-6411(98)00030-3.
Because the relations between electromyographic signal (EMG) and anisometric joint torque remain unpredictable, the aim of this study was to determine the relations between the EMG activity and the isokinetic elbow joint torque via an artificial neural network (ANN) model. This 3-layer feed-forward network was constructed using an error back-propagation algorithm with an adaptive learning rate. The experimental validation was achieved by rectified, low-pass filtered EMG signals from the representative muscles, joint angle and joint angular velocity and measured torque. Learning with a limited set of examples allowed accurate prediction of isokinetic joint torque from novel EMG activities, joint position, joint angular velocity. Sensitivity analysis of the hidden node numbers during the learning and testing phases demonstrated that the choice of numbers of hidden node was not critical except at extreme values of those parameters. Model predictions were well correlated with the experimental data (the mean root-mean-square-difference and correlation coefficient gamma in learning were 0.0290 and 0.998, respectively, and in three different speed testings were 0.1413 and 0.900, respectively). These results suggested that an ANN model can represent the relations between EMG and joint torque/moment in human isokinetic movements. The effect of different adjacent electrode sites was also evaluated and showed the location of electrodes was very important to produce errors in the ANN model.
由于肌电信号(EMG)与等长关节扭矩之间的关系仍然不可预测,本研究的目的是通过人工神经网络(ANN)模型确定EMG活动与等速肘关节扭矩之间的关系。这个三层前馈网络是使用具有自适应学习率的误差反向传播算法构建的。通过对代表性肌肉的整流、低通滤波后的EMG信号、关节角度、关节角速度和测量扭矩进行实验验证。利用有限的一组示例进行学习,可以根据新的EMG活动、关节位置、关节角速度准确预测等速关节扭矩。在学习和测试阶段对隐藏节点数量进行敏感性分析表明,除了这些参数的极端值外,隐藏节点数量地选择并不关键。模型预测与实验数据具有良好的相关性(学习阶段的均方根差均值和相关系数γ分别为0.0290和0.998,在三种不同速度测试中分别为0.1413和0.900)。这些结果表明,人工神经网络模型可以表示人体等速运动中肌电信号与关节扭矩/力矩之间的关系。还评估了不同相邻电极位置的影响,结果表明电极位置对于在人工神经网络模型中产生误差非常重要。