Title of article :
Short-Sampled Blind Source Separation of Rotating Machinery Signals Based on Spectrum Correction
Author/Authors :
Huang, Xiangdong School of Electronic Information Engineering - Tianjin University, China , Jin, Xukang School of Electronic Information Engineering - Tianjin University, China , Fu, Haipeng School of Electronic Information Engineering - Tianjin University, China
Pages :
11
From page :
1
To page :
11
Abstract :
Nowadays, the existing blind source separation (BSS) algorithms in rotating machinery fault diagnosis can hardly meet the demand of fast response, high stability, and low complexity simultaneously. Therefore, this paper proposes a spectrum correction based BSS algorithm. Through the incorporation of FFT, spectrum correction, a screen procedure (consisting of frequency merging, candidate pattern selection, and single-source-component recognition), modified -means based source number estimation, and mixing matrix estimation, the proposed BSS algorithm can accurately achieve harmonics sensing on field rotating machinery faults in case of short-sampled observations. Both numerical simulation and practical experiment verify the proposed BSS algorithm’s superiority in the recovery quality, stability to insufficient samples, and efficiency over the existing ICA-based methods. Besides rotating machinery fault diagnosis, the proposed BSS algorithm also possesses a vast potential in other harmonics-related application fields.
Keywords :
Spectrum Correction , Rotating Machinery Signals , Blind Source Separation , Short-Sampled
Journal title :
Shock and Vibration
Serial Year :
2016
Full Text URL :
Record number :
2615223
Link To Document :
بازگشت