Engine gearbox fault diagnosis using machine learning approach

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Date

2018

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Emerald Group Publishing Ltd. Howard House Wagon Lane, Bingley BD16 1WA

Abstract

Purpose: Bearings and gears are major components in any rotatory machines and, thus, gained interest for condition monitoring. The failure of such critical components may cause an increase in down time and maintenance cost. Condition monitoring using the machine learning approach is a conceivable solution for the problem raised during the operation of the machinery system. The paper aims to discuss these issues. Design/methodology/approach: This paper aims engine gearbox fault diagnosis based on a decision tree and artificial neural network algorithm. Findings: The experimental result (classification accuracy 85.55 percent) validates that the proposed approach is an effective method for engine gearbox fault diagnosis. Originality/value: This paper attempts to diagnose the faults in engine gearbox based on the machine learning approach with the combination of statistical features of vibration signals, decision tree and multi-layer perceptron neural network techniques. © 2018, Emerald Publishing Limited.

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Keywords

Computer aided diagnosis, Condition monitoring, Data mining, Decision trees, Engines, Failure analysis, Gears, Learning systems, Network layers, Neural networks, Trees (mathematics), Artificial neural network algorithm, Classification accuracy, Decision tree techniques, Design/methodology/approach, Engine gearboxes, Machine learning approaches, Multi-layer perceptron neural networks, Statistical features, Fault detection

Citation

Journal of Quality in Maintenance Engineering, 2018, 24, 3, pp. 345-357

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