Wind turbine fault diagnosis method based on α stable distribution and wiegthed support vector machines

Author(s):  
Rachid Saadane ◽  
Mohammed El Aroussi ◽  
Mohammed Wahbi
2013 ◽  
Vol 827 ◽  
pp. 309-314
Author(s):  
Fang Lu ◽  
Hong Da Liu ◽  
Wei Yuan Fan ◽  
Wen Hao Zhang ◽  
Nai Jun Shen ◽  
...  

Based on support vector machines (SVM) theory, the method of fault diagnosis for controlled rectifier circuits is expanded to study in the paper, by the basis we analysis the method can be applied to diode rectifier circuit and verified it through the experiment. In addition to this , the rectifier circuit with different types of loads are also simulated to describe the reason this method is applicable to the different types of loads. In the premise of ensuring the accuracy of the method, through the expansion of research, the fault diagnosis method has broader prospects and higher practical value.


Author(s):  
X L Zhang ◽  
X F Chen ◽  
Z J He

Since support vector machines (SVM) exhibit a good generalization performance in the small sample cases, these have a wide application in machinery fault diagnosis. However, a problem arises from setting optimal parameters for SVM so as to obtain optimal diagnosis result. This article presents a fault diagnosis method based on SVM with parameter optimization by ant colony algorithm to attain a desirable fault diagnosis result, which is performed on the locomotive roller bearings to validate its feasibility and efficiency. The experiment finds that the proposed algorithm of ant colony optimization with SVM (ACO—SVM) can help one to obtain a good fault diagnosis result, which confirms the advantage of the proposed ACO—SVM approach.


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