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An improved empirical mode decomposition method using second generation wavelets interpolation

机译:使用第二代小波插值的改进的经验模式分解方法

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Empirical mode decomposition (EMD) may generate undesirable intrinsic mode functions (IMFs) under low sampling rate, which can significantly affect the results of decomposition. In this paper, an improved EMD method using second generation wavelets interpolation is presented which can eliminate undesirable IMFs and reduce the scale mixing effectively under low sampling rate. Firstly, the original signal under low sampling rate is reconstructed by inverse process of second generation wavelets lifting algorithm. Secondly, the location algorithm of extrema using second generation wavelets is given to obtain the accurate position of extrema. Finally, five examples are demonstrated to justify the effectiveness. Numerical simulation and experimental results are attained to show the effectiveness of the proposed method in eliminating undesirable IMFs and reducing the scale mixing, thereby making the proposed improved EMD a promising method for improving the performance of EMD under low sampling rate. (C) 2018 Elsevier Inc. All rights reserved.
机译:经验模式分解(EMD)可以在低采样率下产生不希望的内在模式功能(IMF),这可能会显着影响分解的结果。本文提出了一种利用第二代小波插值的改进的EMD方法,其可以消除不希望的IMF,并在低采样率下有效地减小比例。首先,通过第二代小波提升算法的逆过程重建在低采样速率下的原始信号。其次,给出了使用第二代小波的极值位置算法获得了极值的准确位置。最后,证明了五个例子以证明其有效性。实现了数值模拟和实验结果,以显示提出的方法在消除不期望的IMF和降低刻度混合时的有效性,从而提出了提高的EMD在低采样率下提高EMD性能的有希望方法。 (c)2018年Elsevier Inc.保留所有权利。

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