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Fault Detection and Discrimination of Rotating Machinery Using Frequency Symptom Parameter and Bayesian Network
Fault Detection and Discrimination of Rotating Machinery Using Frequency Symptom Parameter and Bayesian Network
Fault Detection and Discrimination of Rotating Machinery Using Frequency Symptom Parameter and Bayesian Network
Jiang, H.Y. (author) / Wang, H.Q. (author) / Chen, P. (author) / Ihara, Ikuo
International conference; 2nd, Mechanical engineering materials science and civil engineering II: selected, peer reviewed papers from the 2nd international conference on mechanical engineering, materials science and civil engineering (ICMEMSCE 2013), October 25-26 2013, Beijing, China / ; 2013 ; Beijing
2014-01-01
6 pages
Includes bibliographical references and index.
Conference paper
English
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