2021
DOI: 10.18280/eesrj.080404
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An Adaptive Filtering Method for Bridge Vibration Signals Based on Improved CEEMDAN and Multi-Scale Permutation Entropy

Abstract: Aiming at the serious noise of bridge vibration signals in complex environment, this paper proposed an adaptive filtering and denoising optimization method for bridge structural health monitoring. The method took CEEMDAN algorithm as the core, during the step-by-step decomposition of original signals, white noise with opposite signs was added in each stage, meanwhile multi-scale permutation entropy (MPE) was introduced to analyze the mean entropy of each intrinsic mode function (IMF) at different scales, and c… Show more

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“…EEMD (Li et al, 2018) is to add Gaussian white noise with uniform frequency distribution on the basis of EMD, so that the heart sound signal has continuity feature at different scales, thereby reducing the influence of mode aliasing. CEEMDAN (Hu et al, 2018) calculates the only residual signal by adding adaptive Gaussian white noise in each decomposition stage. To set S(t) be the original signal, Z i t ð Þ be the jth mode component obtained by EMD decomposition, n i t ð Þ be the zero mean value added at the ith time, the white noise sequence with variance of 1, and ε be the signal-to-noise ratio control coefficient.…”
Section: Ceemdan Algorithmmentioning
confidence: 99%
“…EEMD (Li et al, 2018) is to add Gaussian white noise with uniform frequency distribution on the basis of EMD, so that the heart sound signal has continuity feature at different scales, thereby reducing the influence of mode aliasing. CEEMDAN (Hu et al, 2018) calculates the only residual signal by adding adaptive Gaussian white noise in each decomposition stage. To set S(t) be the original signal, Z i t ð Þ be the jth mode component obtained by EMD decomposition, n i t ð Þ be the zero mean value added at the ith time, the white noise sequence with variance of 1, and ε be the signal-to-noise ratio control coefficient.…”
Section: Ceemdan Algorithmmentioning
confidence: 99%