Applied Mathematics and Mechanics (English Edition) ›› 2006, Vol. 27 ›› Issue (1): 99-108 .doi: https://doi.org/10.1007/s10483-006-0113-1
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李如强, 陈进, 伍星
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通讯作者:
LI Ru-qiang, CHEN Jin, WU Xing
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Abstract: A novel knowledge-based fuzzy neural network (KBFNN) for fault diagnosis is presented. Crude rules were extracted and the corresponding dependent factors and antecedent coverage factors were calculated firstly from the diagnostic sample based on rough sets theory. Then the number of rules was used to construct partially the structure of a fuzzy neural network and those factors were implemented as initial weights, with fuzzy output parameters being optimized by genetic algorithm. Such fuzzy neural network was called KBFNN. This KBFNN was utilized to identify typical faults of rotating machinery. Diagnostic results show that it has those merits of shorter training time and higher right diagnostic level compared to general fuzzy neural networks.
Key words: rotating machinery, fault diagnosis, rough sets theory, fuzzy sets theory, generic algorithm, knowledge-based fuzzy neural network
中图分类号:
TP 206.3
82C32
93C42
李如强;陈进;伍星. FAULT DIAGNOSIS OF ROTATING MACHINERY USING KNOWLEDGE-BASED FUZZY NEURAL NETWORK[J]. Applied Mathematics and Mechanics (English Edition), 2006, 27(1): 99-108 .
LI Ru-qiang;CHEN Jin;WU Xing. FAULT DIAGNOSIS OF ROTATING MACHINERY USING KNOWLEDGE-BASED FUZZY NEURAL NETWORK[J]. Applied Mathematics and Mechanics (English Edition), 2006, 27(1): 99-108 .
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链接本文: https://www.amm.shu.edu.cn/CN/10.1007/s10483-006-0113-1
https://www.amm.shu.edu.cn/CN/Y2006/V27/I1/99