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Wear particle image analysis: feature extraction, selection and classification by deep and machine learning

Joseph Vivek (School of Mechanical Engineering, Vellore Institute of Technology – Chennai Campus, Chennai, India)
Naveen Venkatesh S. (School of Mechanical Engineering, Vellore Institute of Technology – Chennai Campus, Chennai, India and Division of Operation and Maintenance Engineering at Luleå University of Technology, Luleå, Sweden)
Tapan K. Mahanta (School of Mechanical Engineering, Vellore Institute of Technology – Chennai Campus, Chennai, India)
Sugumaran V. (School of Mechanical Engineering, Vellore Institute of Technology – Chennai Campus, Chennai, India)
M. Amarnath (Tribology and Machine Dynamics Laboratory, Department of Mechanical Engineering, Indian Institute of Information Technology, Design and Manufacturing Jabalpur, Jabalpur, India)
Sangharatna M. Ramteke (Department of Mechanical and Metallurgical Engineering, School of Engineering, Pontificia Universidad Catolica de Chile, Santiago, Chile)
Max Marian (Department of Mechanical and Metallurgical Engineering, School of Engineering, Pontificia Universidad Catolica de Chile, Santiago, Chile and Institute of Machine Design and Tribology (IMKT), Leibniz University Hannover, Garbsen, Germany)

Industrial Lubrication and Tribology

ISSN: 0036-8792

Article publication date: 21 May 2024

Issue publication date: 26 June 2024

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Abstract

Purpose

This study aims to explore the integration of machine learning (ML) in tribology to optimize lubrication interval decisions, aiming to enhance equipment lifespan and operational efficiency through wear image analysis.

Design/methodology/approach

Using a data set of scanning electron microscopy images from an internal combustion engine, the authors used AlexNet as the feature extraction algorithm and the J48 decision tree algorithm for feature selection and compared 15 ML classifiers from the lazy-, Bayes and tree-based families.

Findings

From the analyzed ML classifiers, instance-based k-nearest neighbor emerged as the optimal algorithm with a 95% classification accuracy against testing data. This surpassed individually trained convolutional neural networks’ (CNNs) and closely approached ensemble deep learning (DL) techniques’ accuracy.

Originality/value

The proposed approach simplifies the process, enhances efficiency and improves interpretability compared to more complex CNNs and ensemble DL techniques.

Keywords

Acknowledgements

S.M. Ramteke and M. Marian kindly acknowledge the financial support given by ANID-Chile within the project Fondecyt de Postdoctorado No. 3230027.

Author contributions. J. Vivek, N. Venkatesh S., Sugumaran V., Amarnath M. and S.M. Ramteke conceived the idea. S.M. Ramteke generated the experimental data. J. Vivek, N.Venkatesh S., T.K. Mahanta and Sugumaran V. performed the ML modeling and analysis and evaluated the results. S.M. Ramteke and M. Marian wrote the manuscript. All authors have read and agreed to the published version of the manuscript.

Citation

Vivek, J., Venkatesh S., N., Mahanta, T.K., V., S., Amarnath, M., Ramteke, S.M. and Marian, M. (2024), "Wear particle image analysis: feature extraction, selection and classification by deep and machine learning", Industrial Lubrication and Tribology, Vol. 76 No. 5, pp. 599-607. https://doi.org/10.1108/ILT-12-2023-0414

Publisher

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Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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