Title :
A Fault Feature Extraction Method for Machine Health Diagnosis Using Manifold Learning
Author :
Yongbin, Liu ; Lin, Zhu ; Qingbo, He ; Ping, Zhang ; Jiwen, Zhao
Author_Institution :
Sch. of Electr. Eng. & Autom., Anhui Univ., Hefei, China
fDate :
July 31 2012-Aug. 2 2012
Abstract :
The fault signature can be revealed by vibration analysis in machine fault detection and diagnosis. It is difficult to evaluate the status of machine for that non-stationary and non-linear vibrations are often caused in machine working process. Manifold learning is a new method for dimensionality reduction and information mining of nonlinear data. In this paper, four statuses of rolling bearing were simulated to investigate status features extraction using manifold learning method. Compared to principal component analysis (PCA), the low dimensional embedded features extracted by the Local tangent space alignment (LTSA) algorithm have excellent clustering quality. Experimental results indicated that the LTSA algorithm has great merit in good clustering with small within-class distance, and thus provides an effective method for intelligent diagnosis of rolling bearing.
Keywords :
condition monitoring; data mining; fault diagnosis; feature extraction; learning (artificial intelligence); mechanical engineering computing; pattern clustering; rolling bearings; vibrations; LTSA algorithm; clustering quality; fault feature extraction method; fault signature; intelligent rolling bearing diagnosis; local-tangent space alignment algorithm; low-dimensional embedded feature extraction; machine fault detection; machine fault diagnosis; machine health diagnosis; machine working process; manifold learning; nonlinear data dimensionality reduction; nonlinear data information mining; nonlinear vibrations; nonstationary vibrations; status feature extraction; Data mining; Fault diagnosis; Feature extraction; Manifolds; Principal component analysis; Rolling bearings; Vibrations; Faults Diagnosis; Feature Extraction; Local Tangent Space Alignment; Manifold Learning; Rolling Bearing;
Conference_Titel :
Digital Manufacturing and Automation (ICDMA), 2012 Third International Conference on
Conference_Location :
GuiLin
Print_ISBN :
978-1-4673-2217-1
DOI :
10.1109/ICDMA.2012.11