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首页> 外文期刊>Advances in artificial neural systems >Design of Adaptive Filter Using Jordan/Elman Neural Network in a Typical EMG Signal Noise Removal
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Design of Adaptive Filter Using Jordan/Elman Neural Network in a Typical EMG Signal Noise Removal

机译:典型EMG信号去除中基于Jordan / Elman神经网络的自适应滤波器设计。

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The bioelectric potentials associated with muscle activity constitute the electromyogram (EMG). These EMG signals are low-frequency and lower-magnitude signals. In this paper, it is presented that Jordan/Elman neural network can be effectively used for EMG signal noise removal, which is a typical nonlinear multivariable regression problem, as compared with other types of neural networks. Different neural network (NN) models with varying parameters were considered for the design of adaptive neural-network-based filter which is a typical SISO system. The performance parameters, that is, MSE, correlation coefficient,N/P, andt, are found to be in the expected range of values.
机译:与肌肉活动相关的生物电势构成了肌电图(EMG)。这些EMG信号是低频和低振幅信号。本文提出,与其他类型的神经网络相比,Jordan / Elman神经网络可以有效地用于EMG信号噪声去除,这是典型的非线性多变量回归问题。在设计基于自适应神经网络的滤波器(典型的SISO系统)时,考虑了具有不同参数的不同神经网络(NN)模型。发现性能参数,即MSE,相关系数,N / P和t在预期的值范围内。

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