Optimal Adaptive Filter Design of M-wave Elimination for Treating Tooth Grinding

H. Yeom
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Abstract

When tooth grinding occurs, electrical stimulation is given at the same time, and tooth grinding stops on such stimulation. Electromyography signals are used as control signals of electrical stimulation to disturb tooth grinding. However because of the electrical stimulation, the M-waves are generated and mixed with spontaneous electromyogram. In this study, we designed an optimal filter to remove M-wave and conserve spontaneous electromyogram simultaneously. The inverse power method (IPM) showed that the optimal filter coefficient is the eigenvector corresponding to the minimum eigenvalue of the input covariance matrix. In order to evaluate the performance of the optimal filter, we compared using a conventional band pass filter and adaptive filter using least mean square algorithm. The experimental results show that the optimal filter can effectively remove the M-wave compared to the previously studied prediction error filter it in practice because of cost and difficulties in the examination method. We can define the EMG signal generated at the beginning of ejaculation as a voluntary EMG signal. There is a signals. It is shown that the optimization process with two constraints is the same as that of a typical eigenfilter design. Finally, the optimal filter has an eigenvector corresponding to the minimum eigenvalue of the input covariance matrix as a coefficient. We also propose a method for adaptively implementing the proposed optimal filter using inverse power method (IPM). And we verify the optimization of the proposed method through experimental process using simulation data.
磨齿m波消除自适应滤波器优化设计
磨牙发生时,同时给予电刺激,在电刺激下停止磨牙。利用肌电信号作为电刺激的控制信号干扰磨牙。然而,由于电刺激,m波产生并与自发肌电图混合。在这项研究中,我们设计了一个最佳的过滤器,同时去除m波和保留自发肌电图。逆幂方法(IPM)表明,最优滤波系数是输入协方差矩阵最小特征值对应的特征向量。为了评估最优滤波器的性能,我们比较了使用传统带通滤波器和使用最小均方算法的自适应滤波器。实验结果表明,与以往研究的预测误差滤波器相比,该滤波器在实际应用中由于成本和检验方法的困难,可以有效地去除m波。我们可以将射精开始时产生的肌电信号定义为自发性肌电信号。有一个信号。结果表明,两个约束条件下的优化过程与典型特征滤波器设计的优化过程相同。最后,最优滤波器具有与输入协方差矩阵的最小特征值相对应的特征向量作为系数。我们还提出了一种使用逆功率法(IPM)自适应实现所提出的最优滤波器的方法。并利用仿真数据通过实验过程验证了所提方法的优化效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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