Classification of Bearing Fault Size by Using Support Vector Machines

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Tarih

2017-05-12

Dergi Başlığı

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Yayıncı

International Conference on AdvancesandInnovations in Engineering (ICAIE)

Erişim Hakkı

info:eu-repo/semantics/openAccess

Özet

Bearings are generally used as rolling elements in rotation machines. Faults in the rolling elements causes breakdown, and this may lead downtime and huge damages in rotating machines. On the other hand, bearings are often employed under high load and high running speed conditions. In this study, artificial faults are created on bearing inner rings by a laser beam in certain size namely 0.15 cm, 0.5 cm, 0.9 cm diameter. Vibration signals are collected by a data acquisition device in a shaft-bearing test setup. Before classifying the data, feature extraction is performed to characterize the signal. Statistical features are calculated and they are used as input to classification method. SVM classification model is employed to diagnose the size of the faults. The SVM model developed in this study classify the size of bearings faults with no prediction error. In addition, 0.1 mm error band is determined to eliminate minor bugs.

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Anahtar Kelimeler

Support vector machines; bearings; diagnosing

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Künye

Kaplan K, Kuncan M, Ertunc HM. Classification of bearing fault size by using support vector machines. In: International conference on advances and innovations in engineering (ICAIE).