Manifold learning-based subspace distance for machinery damage assessment

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31 Scopus citations

Abstract

Damage assessment is very meaningful to keep safety and reliability of machinery components, and vibration analysis is an effective way to carry out the damage assessment. In this paper, a damage index is designed by performing manifold distance analysis on vibration signal. To calculate the index, vibration signal is collected firstly, and feature extraction is carried out to obtain statistical features that can capture signal characteristics comprehensively. Then, manifold learning algorithm is utilized to decompose feature matrix to be a subspace, that is, manifold subspace. The manifold learning algorithm seeks to keep local relationship of the feature matrix, which is more meaningful for damage assessment. Finally, Grassmann distance between manifold subspaces is defined as a damage index. The Grassmann distance reflecting manifold structure is a suitable metric to measure distance between subspaces in the manifold. The defined damage index is applied to damage assessment of a rotor and the bearing, and the result validates its effectiveness for damage assessment of machinery component.

Original languageEnglish
Pages (from-to)637-649
Number of pages13
JournalMechanical Systems and Signal Processing
Volume70-71
DOIs
StatePublished - 1 Mar 2016

Keywords

  • Damage assessment
  • Manifold learning
  • Subspace distance
  • Vibration signal

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