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The Application of Support Vector Machines to Gas Turbine Performance Diagnosis 被引量:9

支持向量机在燃气涡轮性能诊断中的应用(英文)
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摘要 SVMs(support vector machines) is a new artificial intelligence methodology derived from Vapnik's statistical learning theory, which has better generalization than artificial neural network. A Csupport vector classifiers Based Fault Diagnostic Model (CBFDM) which gives the 3 most possible fault causes is constructed in this paper. Five fold cross validation is chosen as the method of model selection for CBFDM. The simulated data are generated from PW4000-94 engine influence coefficient matrix at cruise, and the results show that the diagnostic accuracy of CBFDM is over 93 % even when the standard deviation of noise is 3 times larger than the normal. This model can also be used for other diagnostic problems. SVMs(support vector machines) is a new artificial intelligence methodology derived from Vapnik's statistical learning theory, which has better generalization than artificial neural network. A Csupport vector classifiers Based Fault Diagnostic Model (CBFDM) which gives the 3 most possible fault causes is constructed in this paper. Five fold cross validation is chosen as the method of model selection for CBFDM. The simulated data are generated from PW4000-94 engine influence coefficient matrix at cruise, and the results show that the diagnostic accuracy of CBFDM is over 93 % even when the standard deviation of noise is 3 times larger than the normal. This model can also be used for other diagnostic problems.
出处 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2005年第1期15-19,共5页 中国航空学报(英文版)
基金 CivilAviationScienceFoundationofChina (2 0 0 3 193 2 2 )ScienceFoundationofCivilAviationUniversityofChina (0 4 CAUC 11E)
关键词 aerospace propulsion system performance diagnosis support vector machines model selection aerospace propulsion system performance diagnosis support vector machines model selection
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