JOURNAL ARTICLE

Remaining Useful Life Prediction of Rolling Element Bearings Using Supervised Machine Learning

Xiaochuan LiFaris ElashaSuliman ShanbrDavid Mba

Year: 2019 Journal:   Energies Vol: 12 (14)Pages: 2705-2705   Publisher: Multidisciplinary Digital Publishing Institute

Abstract

Components of rotating machines, such as shafts, bearings and gears are subject to performance degradation, which if left unattended could lead to failure or breakdown of the entire system. Analyzing condition monitoring data, implementing diagnostic techniques and using machinery prognostic algorithms will bring about accurate estimation of the remaining life and possible failures that may occur. This paper proposes a combination of two supervised machine learning techniques; namely, the regression model and multilayer artificial neural network model, to predict the remaining useful life of rolling element bearings. Root mean square and Kurtosis were analyzed to define the bearing failure stages. The proposed methodology was validated through two case studies involving vibration measurements of an operational wind turbine gearbox and a split cylindrical roller bearing in a test rig.

Keywords:
Kurtosis Bearing (navigation) Artificial neural network Vibration Rolling-element bearing Engineering Turbine Condition monitoring Artificial intelligence Computer science Machine learning Structural engineering Reliability engineering Mechanical engineering Acoustics Mathematics Statistics

Metrics

40
Cited By
3.14
FWCI (Field Weighted Citation Impact)
24
Refs
0.92
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Machine Fault Diagnosis Techniques
Physical Sciences →  Engineering →  Control and Systems Engineering
Gear and Bearing Dynamics Analysis
Physical Sciences →  Engineering →  Mechanical Engineering
Engineering Diagnostics and Reliability
Physical Sciences →  Engineering →  Mechanics of Materials

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