6533b870fe1ef96bd12cfa20

RESEARCH PRODUCT

Diagnosis of Incipient Bearing Faults using Convolutional Neural Networks

Witold PawlusHuynh Van KhangArild Bergesen Husebo

subject

DowntimeBearing (mechanical)business.industryComputer science020208 electrical & electronic engineeringPattern recognition02 engineering and technologyConvolutional neural networkDomain (software engineering)law.inventionVibrationlaw020204 information systems0202 electrical engineering electronic engineering information engineeringRange (statistics)Artificial intelligencebusinessContinuous wavelet transformDegradation (telecommunications)

description

The majority of faults occurring in rotating electrical machinery is attributed to bearings. To reduce downtime, it is desired to apply various diagnostic methods so that bearing degradation can be detected in good time prior to a complete failure. The work presented in this paper utilizes a data-driven machine learning approach based on convolutional neural networks (CNNs) in order to diagnose different types of bearing faults. A one-dimensional CNN is trained on vibration signals and compared to a two-dimensional CNN trained in time-frequency domain using continuous wavelet transform (CWT). The proposed method is demonstrated on data collected from run-to-failure tests.The results show that the one-dimensional network can be trained to predict bearing faults during degradation at a fairly high rate. The outcome of utilizing the two-dimensional CNN shows that extracting more information from the signals can, in some cases, result in even higher prediction accuracy. However, it also shows the importance of narrowing down the range of relevant features to extract.

https://doi.org/10.1109/wemdcd.2019.8887785