Application of wavelet de-noising in non-stationary signal analysis based on the parameter optimization of improved threshold function

Hai Zhao Nie, Hui Liu, Lei Shi

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Using wavelet analysis for non-stationary signal de-noising of electro-mechanical system is considered to be the best approach, and wavelet threshold de-noising method is the most simple method that needs the minimum amount of calculation. But this method in selecting threshold functions needs to be improved. Based on different domestic and foreign methods of improving threshold function, propose an improved bivariate threshold function. According to the simulation of non-stationary signal de-noising, the results show that the optimal de-noising results of different signals exist by taking different parameters. Compared with all the de-noising effects, application of the bivariate threshold function considering signal-to-noise ratio and mean square error is superior to the traditional soft and hard threshold functions. At the same time, it can significantly improve the filtering precision, and reserve the main signal details while effectively removing the noise well.

Original languageEnglish
Title of host publicationRenewable Energy and Environmental Technology
Pages2068-2076
Number of pages9
DOIs
Publication statusPublished - 2014
Event2013 International Conference on Renewable Energy and Environmental Technology, REET 2013 - Jilin, China
Duration: 21 Sept 201322 Sept 2013

Publication series

NameApplied Mechanics and Materials
Volume448-453
ISSN (Print)1660-9336
ISSN (Electronic)1662-7482

Conference

Conference2013 International Conference on Renewable Energy and Environmental Technology, REET 2013
Country/TerritoryChina
CityJilin
Period21/09/1322/09/13

Keywords

  • Mean square error
  • Non-stationary signal
  • Signal to noise ratio
  • Threshold function
  • Wavelet analysis

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