Intrinsic Dimension Estimation-Based Feature Selection and Multinomial Logistic Regression for Classification of Bearing Faults Using Compressively Sampled Vibration Signals

Abstract

As failures of rolling bearings lead to major failures in rotating machines, recent vibration-based rolling bearing fault diagnosis techniques are focused on obtaining useful fault features from the huge collection of raw data. However, too many features reduce the classification accuracy and increase the computation time. This paper proposes an effective feature selection technique based on intrinsic dimension estimation of compressively sampled vibration signals. First, compressive sampling (CS) is used to get compressed measurements from the collected raw vibration signals. Then, a global dimension estimator, the geodesic minimal spanning tree (GMST), is employed to compute the minimal number of features needed to represent efficiently the compressively sampled signals. Finally, a feature selection process, combining the stochastic proximity embedding (SPE) and the neighbourhood component analysis (NCA), is used to select fewer features for bearing fault diagnosis. With regression analysis-based predictive modelling technique and the multinomial logistic regression (MLR) classifier, the selected features are assessed in two case studies of rolling bearings vibration signals under different working loads. The experimental results demonstrate that the proposed method can successfully select fewer features, with which the MLR-based trained model achieves high classification accuracy and significantly reduced computation times compared to published research.

Publication DOI: https://doi.org/10.3390/e24040511
Divisions: College of Engineering & Physical Sciences > Aston Digital Futures Institute
College of Engineering & Physical Sciences
Aston University (General)
Additional Information: Copyright © 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Publication ISSN: 1099-4300
Last Modified: 31 Mar 2025 07:27
Date Deposited: 10 Jan 2025 10:48
Full Text Link: http://www.scop ... tnerID=MN8TOARS
Related URLs: https://www.mdp ... 9-4300/24/4/511 (Publisher URL)
PURE Output Type: Article
Published Date: 2022-04-05
Accepted Date: 2022-04-03
Authors: Ahmed, H.O.A. (ORCID Profile 0000-0002-8523-1099)
Nandi, A.K.

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