Litcius/Paper detail

A deep learning approach for health monitoring in rotating machineries using vibrations and thermal features

Pauline Ong, Anelka John Koshy, Kee Huong Lai, Chee Kiong Sia, Maznan Ismon

2024Decision Analytics Journal12 citationsDOIOpen Access PDF

Abstract

Gearbox failures can lead to substantial damage, significant financial losses due to maintenance downtimes, and, in some instances, fatalities. This study introduces an intelligent gear fault diagnosis system employing a convolutional neural network (CNN), utilizing vibration and thermal features extracted from healthy, chipped, and broken tooth gear health categories. The performance of the CNN is compared with conventional machine learning models, including Naïve Bayes (NB), random forest (RF), and support vector machine (SVM) classifiers. Experimental investigations highlight CNN’s remarkable performance. With vibration features, the CNN achieved 96.78% accuracy, surpassing SVM (84.89%), NB (81.56%), and RF (85.11%). The CNN attained 100% accuracy when utilizing thermal features, while SVM, NB, and RF achieved 91.11%, 88.89%, and 96.51% accuracies, respectively.

Topics & Concepts

Support vector machineConvolutional neural networkArtificial intelligenceVibrationRandom forestComputer sciencePattern recognition (psychology)Machine learningThermalDeep learningNaive Bayes classifierFault (geology)AcousticsPhysicsGeologySeismologyMeteorologyMachine Fault Diagnosis TechniquesAdvanced machining processes and optimizationGear and Bearing Dynamics Analysis