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摘要:
In the process of Wavelet Analysis,only the low-frequency signals are re-decomposed,and the high-frequency signals are no longer decomposed,resulting in a decrease in frequency resolution with increasing frequency.Therefore,in this paper,firstly,Wavelet Packet Decomposition is used for feature extraction of vibration signals,which makes up for the shortcomings of Wavelet Analysis in extracting fault features of nonlinear vibration signals,and different energy values in different frequency bands are obtained by Wavelet Packet Decomposition.The features are visualized by the K-Means clustering method,and the results show that the extracted energy features can accurately distinguish the different states of the bearing.Then a fault diagnosis model based on BP Neural Network optimized by Beetle Algo-rithm is proposed to identify the bearing faults.Compared with the Particle Swarm Algorithm,Beetle Algorithm can quickly find the error extreme value,which greatly reduces the training time of the model.At last,two experiments are conducted,which show that the accuracy of the model can reach more than 95%,and the model has a certain anti-interference ability.
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篇名 Fault Diagnosis Based on BP Neural Network Optimized by Beetle Algorithm
来源期刊 中国机械工程学报 学科
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年,卷(期) 2021,(6) 所属期刊栏目 Intelligent Manufacturing Technology
研究方向 页码范围 252-261
页数 10页 分类号
字数 语种 英文
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期刊影响力
中国机械工程学报
双月刊
1000-9345
11-2737/TH
北京百万庄大街22号期刊部
eng
出版文献量(篇)
2760
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0
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17793
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