Simulation-Driven Deep Learning Approach for Wear Diagnostics in Hydrodynamic Journal Bearings

Author:

Gecgel Ozhan1,Dias Joao Paulo2,Ekwaro-Osire Stephen1,Alves Diogo3,Machado Tiago H.4,Bregion Daniel Gregory4,de Castro Helio Fiori5,Cavalca Katia Lucchesi6

Affiliation:

1. Department of Mechanical Engineering Texas Tech University Lubbock, TX 79409-1021

2. Department of Civil and Mechanical Engineering 1871 Old Main Drive Shippensburg, PA 17257

3. R. Mendeleyev, 200 - Cidade Universitária Campinas, São Paulo 13083-860 Brazil

4. Mendeleyev street, 200 Campinas, São Paulo 13083860 Brazil

5. R. Mendelev, 200 Dep. of Mechanical Design Campinas, São Paulo 13083860 Brazil

6. Rua Mendeilev, 200 - Cidade Universitária Postal Box 6051 Campinas, 13083-970 Brazil

Abstract

Abstract Early diagnosis in rotating machinery has been a challenge when looking towards the concept of intelligent machines. A crucial and critical component in these systems is the lubricated journal bearing, subjected to wear fault by abrasive removing of material in its inner wall, mainly during run-ups and run-downs. In extreme conditions, wear faults can cause unexpected shutdowns in rotating systems. Consequently, advanced condition monitoring is an essential procedure in the wear diagnosis of journal bearings. Although an increasing number of data-driven condition monitoring approaches for rotating machines have been proposed in the past decade, they mostly rely on substantial amounts of experimental data for training, which is expensive and time-consuming to obtain. The objective of this work is to develop a framework using a deep learning algorithm to classify wear faults in hydrodynamic journal bearings using simulated vibrations signals. Numerically simulated datasets under different wear severity levels and operating conditions were used to train and test the diagnostics framework. The results show that the proposed framework can be a promising tool to wear fault diagnostics in journal bearings.

Funder

Fundação de Amparo à Pesquisa do Estado de São Paulo

Publisher

ASME International

Subject

Surfaces, Coatings and Films,Surfaces and Interfaces,Mechanical Engineering,Mechanics of Materials

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