Poincaré Plot Features and Statistical Features From Current and Vibration Signals for Fault Severity Classification of Helical Gear Tooth Breaks

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5 Scopus citations

Abstract

Most of the approaches of feature extraction for data-driven rotating machinery fault diagnosis assume characteristics of periodicity and seasonality typically inherent to linear signals obtained from different sensors. Nevertheless, the behavior of rotating machinery is not necessarily linear when a failure occurs. Thus, new techniques based on the theory of chaos and nonlinear systems are needed to extract proper features of signals. This article introduces the use of features extracted from the Poincaré plot (PP), which are computed over vibration and current signals measured on a gearbox powered by an induction motor. A comparison between the performance of classic statistical features and PP features is developed by applying feature analysis based on analysis of varaince (ANOVA) and cluster validity assessment to rank and select the subset of best features. K-nearest-neighbor (KNN) algorithm is used to test the performance of the selected feature set for fault severity classification. The use of PP for the analysis of nonlinear, nonperiodic signals is not new; however, its application in mechanical systems is not widely extended. Our contribution aims at highlighting the use of the PP features, supported by data collected from a test bed under real conditions of speed and load, to proof the potential application of this approach. The results show that PP features extracted from the current signal yields 96% of classification accuracy when using at least 11 features.
Translated title of the contributionCaracterísticas del gráfico de Poincaré y características estadísticas de las señales de corriente y vibración para la clasificación de la gravedad de fallas de las roturas de dientes de engranajes helicoidales
Original languageEnglish
Article number021009
Pages (from-to)1-10
JournalJournal of Computing and Information Science in Engineering
Volume23
Issue number2
DOIs
StatePublished - Apr 2023

Bibliographical note

Funding Information:
Thanks go to Universidad Politécnica Salesiana and GIDTEC for supporting this research.

Publisher Copyright:
© 2023 American Society of Mechanical Engineers (ASME). All rights reserved.

Keywords

  • artificial intelligence
  • big data and analytics
  • data-driven engineering
  • engineering informatics
  • gearbox fault severity diagnosis
  • machine learning for engineering applications

CACES Knowledge Areas

  • 145A Mathematics

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