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Bearing Fault Diagnosis Using Fuzzy Inference Optimized by Neural Network and Genetic Algorithm
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 Title & Authors
Bearing Fault Diagnosis Using Fuzzy Inference Optimized by Neural Network and Genetic Algorithm
Lee, Hong-Hee; Nguyen, Ngoc-Tu; Kwon, Jeong-Min;
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 Abstract
The bearing diagnostics method is presented in this paper using fuzzy inference based on vibration data. Both time-domain and frequency-domain features are used as input data for bearing fault detection. The Adaptive Network based Fuzzy Inference System (ANFIS) and Genetic Algorithm (GA) have been proposed to select the fuzzy model input and output parameters. Training results give the optimized fuzzy inference system for bearing diagnosis based on measured vibration data. The result is also tested with other sets of bearing data to illustrate the reliability of the chosen model.
 Keywords
Bearing diagnosis;Fuzzy;Genetic algorithm;Neural network;Vibration;
 Language
English
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