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   Improving Rolling Bearing Fault Diagnosis by DS Evidence Theory Based Fusion Model  
   
نویسنده yao x. ,li s. ,hu j.
منبع journal of sensors - 2017 - دوره : 2017 - شماره : 0
چکیده    Rolling bearing plays an important role in rotating machinery and its working condition directly affects the equipment efficiency. while dozens of methods have been proposed for real-time bearing fault diagnosis and monitoring,the fault classification accuracy of existing algorithms is still not satisfactory. this work presents a novel algorithm fusion model based on principal component analysis and dempster-shafer evidence theory for rolling bearing fault diagnosis. it combines the advantages of the learning vector quantization (lvq) neural network model and the decision tree model. experiments under three different spinning bearing speeds and two different crack sizes show that our fusion model has better performance and higher accuracy than either of the base classification models for rolling bearing fault diagnosis,which is achieved via synergic prediction from both types of models. © 2017 xuemei yao et al.
آدرس key laboratory of advanced manufacturing technology,ministry of education,guizhou university,guiyang, China, key laboratory of advanced manufacturing technology,ministry of education,guizhou university,guiyang,china,school of mechanical engineering,guizhou university,guiyang, China, school of mechanical engineering,guizhou university,guiyang,china,department of computer science and engineering,university of south carolina,columbia,sc, United States
 
     
   
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