TY - GEN
T1 - Classification of bearing faults combining compressive sampling, laplacian score, and support vector machine
AU - Ahmed, H.O.A.
AU - Dennis Wong, M.L.
AU - Nandi, A.K.
PY - 2017/12/18
Y1 - 2017/12/18
N2 - Rolling element bearings have a pivotal role in rotating machine and their failures are the leading cause of more substantial failures in the machine. In response to their importance, there is a growing body of research looking at condition monitoring of rolling element bearings to avoid machine breakdowns. In this study, by taking advantages of Compressive Sampling (CS), Laplacian Score (LS) and Multi-class Support Vector Machine (MSVM), an intelligent method for rolling bearing fault classification is proposed The CS is used to obtain compressed samples of the raw vibration signals, and the LS is used to rank the features of the obtained compressed samples with respect to their importance and correlations with the core fault characteristics. Then, based on LS ranking, we selected a small amount of the most significant compressed samples to produce the features vector. Finally, classification performance using MSVM shows high classification accuracy with a significantly reduced feature set.
AB - Rolling element bearings have a pivotal role in rotating machine and their failures are the leading cause of more substantial failures in the machine. In response to their importance, there is a growing body of research looking at condition monitoring of rolling element bearings to avoid machine breakdowns. In this study, by taking advantages of Compressive Sampling (CS), Laplacian Score (LS) and Multi-class Support Vector Machine (MSVM), an intelligent method for rolling bearing fault classification is proposed The CS is used to obtain compressed samples of the raw vibration signals, and the LS is used to rank the features of the obtained compressed samples with respect to their importance and correlations with the core fault characteristics. Then, based on LS ranking, we selected a small amount of the most significant compressed samples to produce the features vector. Finally, classification performance using MSVM shows high classification accuracy with a significantly reduced feature set.
UR - http://www.scopus.com/inward/record.url?eid=2-s2.0-85046627332&partnerID=MN8TOARS
UR - https://ieeexplore.ieee.org/document/8217413
U2 - 10.1109/IECON.2017.8217413
DO - 10.1109/IECON.2017.8217413
M3 - Conference publication
BT - IECON 2017 - 43rd Annual Conference of the IEEE Industrial Electronics Society
PB - IEEE
ER -