2006 | OriginalPaper | Buchkapitel
Induction Machine Rotor Diagnosis Using Support Vector Machines and Rough Set
Erschienen in: Computational Intelligence
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A fault diagnosis system based on integration of rough set theory (RST) and support vector machine (SVM) is developed for induction machine rotor faults detection. The proposed algorithm uses the stator current spectrum as inputs. By RST attribute reduction, redundant attributes are identified and removed. Then the reduction results are used as the input of SVM based classifiers to distinguish different motor conditions. A series of experiments using a three phase 1.5KW induction machine performed in different conditions are used to provide training and test data. The diagnosis results demonstrated that the solution can reduce the cost and raise the efficiency of the diagnosis.