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A fast entropy assisted complete ensemble empirical mode decomposition algorithm

机译:快速熵辅助的完整集合经验模式分解算法

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Empirical mode decomposition (EMD) is a simple and real-time procedure to adaptively decompose a signal into a set of oscillation scales, but it faces the serious problem of mode mixing. The improved complete ensemble EMD with adaptive noise (Improved CEEMDAN) can successfully eliminate the mode mixing by adding white noise's IMFs and utilizing an ensemble and average procedure, but it does not satisfy the real-time processing requirement. In this paper, a new fast entropy assisted CEEMD (FEACEEMD) approach will be explained, in which the permutation entropy (PEn) index that marks an IMF's randomness and intermittence characteristic is used to control the fusion usage of both Improved CEEMDAN and EMD in order to bring in the good things from both sides. Artificial experiments showed that the new method is much more effective, real-time and robust than the original improved CEEMDAN. Additionally, experiments using ship recorded data showed the algorithm's engineering application potentiality.
机译:经验模态分解(EMD)是一种简单而实时的过程,可以将信号自适应地分解为一组振荡标度,但是它面临着模式混合的严重问题。改进的带有自适应噪声的完整集成EMD(改进的CEEMDAN)可以通过添加白噪声的IMF并利用集成平均方法成功消除模式混合,但它不能满足实时处理要求。在本文中,将解释一种新的快速熵辅助CEEMD(FEACEEMD)方法,其中使用标记IMF随机性和间歇性特征的置换熵(PEn)指数来按顺序控制改进的CEEMDAN和EMD的融合使用带来双方的好东西。人工实验表明,该新方法比原来的改进版CEEMDAN更加有效,实时且可靠。此外,使用舰船记录数据进行的实验表明了该算法的工程应用潜力。

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