Title of article :
Fault Diagnosis for Aero-engine Applying a New Multi-class Support Vector Algorithm
Author/Authors :
XU، نويسنده , , Qi-hua and SHI، نويسنده , , Jun، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Hierarchical Support Vector Machine (H-SVM) is faster in training and classification than other usual multi-class SVMs such as “1-V-R” and “1-V-1”. In this paper, a new multi-class fault diagnosis algorithm based on H-SVM is proposed and applied to aero-engine. Before SVM training, the training data are first clustered according to their class-center Euclid distances in some feature spaces. The samples which have close distances are divided into the same sub-classes for training, and this makes the H-SVM have reasonable hierarchical construction and good generalization performance. Instead of the common C-SVM, the v-SVM is selected as the binary classifier, in which the parameter v varies only from 0 to 1 and can be determined more easily. The simulation results show that the designed H-SVMs can fast diagnose the multi-class single faults and combination faults for the gas path components of an aero-engine. The fault classifiers have good diagnosis accuracy and can keep robust even when the measurement inputs are disturbed by noises.
Keywords :
Support vector machine , Multi-class classification , Fault diagnosis
Journal title :
Chinese Journal of Aeronautics
Journal title :
Chinese Journal of Aeronautics