Title :
Gear incipient fault prognosis using Density-adjustable Spectral Clustering and Transductive SVM
Author :
Huan Yin ; Weihua Li
Author_Institution :
Sch. of Mech. & Automotive Eng., South China Univ. of Technol., Guangzhou, China
Abstract :
A novel method is presented in this paper, which using Density-adjustable Spectral Clustering and Transductive Support Vector Machine, called DSTSVM, to accomplish feature extraction and fault detection. Firstly, the features are extracted via Density-adjustable Spectral clustering, and the Kernel function of TSVM (Transductive Support Vector Machine) is also constructed. Then the TSVM is trained by gradient descent learning and applied in gear failure detection. Gear fault experiments were conducted on an automobile transmission tests platform, and the proposed method were compared with those using TSVM, CKSVM (Cluster Kernel). Experiments results indicated that the proposed approach can reflect the data structure well, and has high classification accuracy with few labeled data.
Keywords :
failure analysis; fault diagnosis; feature extraction; gears; gradient methods; learning (artificial intelligence); mechanical engineering computing; mechanical testing; pattern clustering; power transmission (mechanical); support vector machines; CKSVM; DSTSVM; Kernel function; automobile transmission test platform; cluster kernel support vector machine; density-adjustable spectral clustering; fault detection; feature extraction; gear failure detection; gear fault experiments; gear incipient fault prognosis; gradient descent learning; transductive SVM; transductive support vector machine; Kernel; Optical sensors; Support vector machine classification; Gear; Incipient Fault Prognosis; Spectral Clustering; TSVM;
Conference_Titel :
Prognostics and System Health Management (PHM), 2012 IEEE Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4577-1909-7
Electronic_ISBN :
2166-563X
DOI :
10.1109/PHM.2012.6228905