Title :
Diagnosis and prognosis of in-service electric machine in the absence of historic data related to faults and faults progression
Author :
Zaidi, Syed Sajjad Haider
Author_Institution :
Nat. Univ. of Sci. & Technol., Islamabad, Pakistan
Abstract :
Extensive work has been presented in the literature related to fault diagnosis and prognosis of machines and related components. Prime focus of the proposed techniques is on either on assembly line checkout of machines or newly installed machines as a large number of methods are based on supervised learning. In this paper, fault diagnosis algorithm of in-service DC starter motor is presented. The proposed approach encompasses on the development of predefined fault progression curves. Features to develop these curves are extracted from machine current in time frequency domain. According to the proposed method, a number of curves are developed each of different order and slope. As the machine fault progresses, the fault features are projected on these curves and the % fault severity is identified. The results are presented and conclusions are made.
Keywords :
DC motors; assembling; fault diagnosis; feature extraction; learning (artificial intelligence); power engineering computing; starting; time-frequency analysis; assembly line checkout; fault diagnosis algorithm; fault feature extraction; fault prognosis; fault progression curve; in-service DC starter motor; in-service electric machine; machine current; machine fault progression; supervised learning; time frequency domain; Automotive components; Fault diagnosis; Feature extraction; Gears; Hidden Markov models; Prognostics and health management; Time-frequency analysis; Diagnosis; Electric Machine; Pattern Recognition; Principle Component Analysis; Prognosis; Time Frequency Analysis; fault estimation;
Conference_Titel :
Diagnostics for Electric Machines, Power Electronics and Drives (SDEMPED), 2013 9th IEEE International Symposium on
Conference_Location :
Valencia
DOI :
10.1109/DEMPED.2013.6645778