Title :
Fault Diagnosis of Engine Based on Supervision of Data-Driven
Author :
Li, Feng ; Mu, Zheng ; Liao, Wei
Author_Institution :
Hebei Univ. of Eng., Handan, China
Abstract :
Several kinds of information generated during the operation process of the engine, generally speaking, there is no one-to-one correspondence between the characteristic parameters and status, whereas, there are often existing many types of faults. After analyze the problem of uncertainty and other issues which the fault diagnosis of engine is faced, in this paper, a new approach for fault diagnosis of engine based on supervision of data-driven is proposed. This algorithm begin with the given classification data, using the representative points on behalf of class mean values, using the weighted distances in place of Euclidean distances. Then employing the method to identify 8 kinds of common fault states for engine, the experiment results shows that the method based on optimal representative points clustering is an effective way to diagnosis the fault for engine.
Keywords :
engines; fault diagnosis; mechanical engineering computing; pattern classification; pattern clustering; Euclidean distances; data classification; data-driven supervision; engine fault diagnosis; engine operation process; representative points clustering; Automation; Condition monitoring; Data engineering; Data mining; Engines; Fault diagnosis; Iterative algorithms; Machine learning; Neural networks; Support vector machines; fault diagnosis; generators; optimal representative point; supervision of data-driven;
Conference_Titel :
Intelligent Computation Technology and Automation, 2009. ICICTA '09. Second International Conference on
Conference_Location :
Changsha, Hunan
Print_ISBN :
978-0-7695-3804-4
DOI :
10.1109/ICICTA.2009.359