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Research on Gear-box Fault Diagnosis Method Based on Adjusting-learning-rate PSO Neural Network 被引量:2

Research on Gear-box Fault Diagnosis Method Based on Adjusting-learning-rate PSO Neural Network
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摘要 Based on the research of Particle Swarm Optimization (PSO) learning rate, two learning rates are changed linearly with velocity-formula evolving in order to adjust the proportion of social part and cognitional part; then the methods are applied to BP neural network training, the convergence rate is heavily accelerated and locally optional solution is avoided. According to actual data of two levels compound-box in vibration lab, signals are analyzed and their characteristic values are abstracted. By applying the trained BP neural networks to compound-box fault diagnosis, it is indicated that the methods are sound effective. Based on the research of Particle Swarm Optimization (PSO) learning rate, two learning rates are changed linearly with velocity-formula evolving in order to adjust the proportion of social part and cognitional part; then the methods are applied to BP neural network training, the convergence rate is heavily accelerated and locally optional solution is avoided. According to actual data of two levels compound-box in vibration lab, signals are analyzed and their characteristic values are abstracted. By applying the trained BP neural networks to compound-box fault diagnosis, it is indicated that the methods are sound effective.
出处 《Journal of Donghua University(English Edition)》 EI CAS 2006年第6期29-32,共4页 东华大学学报(英文版)
基金 Supported by National Natural Science Foundation (No.50575214)
关键词 齿轮结构 神经网络 调节作用 诊断方法 particle swarm optimization, neural network,fault diagnosis method, compound-box.
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