Title :
Fault diagnosis for valves of compressors based on Support Vector Machine
Author :
Chen, Zhigang ; Lian, Xiangjiao
Author_Institution :
Dept. of Mechanic Eng., Beijing Univ. of Civil Eng. & Archit., Beijing, China
Abstract :
Valves are the key parts of the reciprocating compressor and faults frequently occur because of its working for a long time and in bad environment. It is extremely difficult to extract feature and establish failure identification model due to the non-stationarity and nonlinearity of the compressor valve vibration signal. According to the difficult diagnosis of large reciprocating compressor valves, the information entropy with good fault-tolerance ability was extracted as the feature parameter, which outlines the overall statistical characteristic of the signal. The extracted wavelet packet entropy was used as input vector to construct the decision function. For solving the defect of traditional classificatory with many samples, a valve wear failure classifier based on Support Vector Machine (SVM) is proposed, The new SVM classifier can be trained in a few samples rapidly to recognize several kinds of new faults. The experimental result demonstrates it was effective of the model in the non-stationarity signal feature extraction and nonlinearity pattern classification with a few samples and the recognizing correct rate increased more greatly compared with traditional BP method.
Keywords :
compressors; entropy; fault diagnosis; fault tolerance; mechanical engineering computing; pattern classification; statistical analysis; support vector machines; valves; compressor valve vibration signal; failure identification model; fault diagnosis; fault tolerance; information entropy; nonlinearity pattern classification; nonstationarity signal feature extraction; statistical characteristics; support vector machine; valve wear failure classifier; wavelet packet entropy; Compressors; Data mining; Fault diagnosis; Fault tolerance; Feature extraction; Information entropy; Signal processing; Support vector machine classification; Support vector machines; Valves; Fault Diagnosis; Feature Extraction; Information Entropy; Reciprocating Compressor; SVM;
Conference_Titel :
Control and Decision Conference (CCDC), 2010 Chinese
Conference_Location :
Xuzhou
Print_ISBN :
978-1-4244-5181-4
Electronic_ISBN :
978-1-4244-5182-1
DOI :
10.1109/CCDC.2010.5498165