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Fault Diagnosis of a Rotary Machine Based on Information Entropy and Rough Set 被引量:3

Fault Diagnosis of a Rotary Machine Based on Information Entropy and Rough Set
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摘要 There exists some discord or contradiction of information during the process of fault diagnosis for rotary machine. But the traditional methods used in fault diagnosis can not dispose of the information. A model of fault diagnosis for a rotary machine based on information entropy theory and rough set theory is presented in this paper. The model has clear mathematical definition and can dispose both complete unification information and complete inconsistent information of vibration faults. By using the model, decision rules of six typical vibration faults of a steam turbine and electric generating set are deduced from experiment samples. Finally, the decision rules are validated by selected samples and good identification results are acquired. There exists some discord or contradiction of information during the process of fault diagnosis for rotary machine. But the traditional methods used in fault diagnosis can not dispose of the information. A model of fault diagnosis for a rotary machine based on information entropy theory and rough set theory is presented in this paper. The model has clear mathematical definition and can dispose both complete unification information and complete inconsistent information of vibration faults. By using the model, decision rules of six typical vibration faults of a steam turbine and electric generating set are deduced from experiment samples. Finally, the decision rules are validated by selected samples and good identification results are acquired.
出处 《International Journal of Plant Engineering and Management》 2007年第4期199-206,共8页 国际设备工程与管理(英文版)
基金 The paper is supported by the 863 Program of China under Grant No 2006AA04A110
关键词 fault diagnosis rough set information entropy decision rule SAMPLE rotary machine fault diagnosis, rough set, information entropy, decision rule, sample, rotary machine
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