The entropy algorithm and its variants in the fault diagnosis of rotating machinery: A review

Yongbo Li, Xianzhi Wang, Zhenbao Liu, Xihui Liang, Shubin Si

Research output: Contribution to journalArticlepeer-review

270 Scopus citations

Abstract

Rotating machines have been widely used in industrial engineering. The fault diagnosis of rotating machines plays a vital important role to reduce the catastrophic failures and heavy economic loss. However, the measured vibration signal of rotating machinery often represents non-linear and non-stationary characteristics, resulting in difficulty in the fault feature extraction. As a statistical measure, entropy can quantify the complexity and detect dynamic change through taking into account the non-linear behavior of time series. Therefore, entropy can be served as a promising tool to extract the dynamic characteristics of rotating machines. Recently, many studies have applied entropy in fault diagnosis of rotating machinery. This paper aims to investigate the applications of entropy for the fault characteristics extraction of rotating machines. First, various entropy methods are briefly introduced. Its foundation, application, and some improvements are described and discussed. The review is divided into eight parts: Shannon entropy, Rényi entropy, approximate entropy, sample entropy, fuzzy entropy, permutation entropy, and other entropy methods. In each part, we will review the applications using the original entropy method and the improved entropy methods, respectively. In the end, a summary and some research prospects are given.

Original languageEnglish
Article number8528456
Pages (from-to)66723-66741
Number of pages19
JournalIEEE Access
Volume6
DOIs
StatePublished - 2018

Keywords

  • Entropy
  • condition-based maintenance
  • fault diagnosis
  • fault feature extraction
  • rotating machinery

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