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基于ARCN模型的轴承故障诊断
引用本文:梁海涛,王立纲,王亮,张庆峰.基于ARCN模型的轴承故障诊断[J].航空动力学报,2021,36(9):1793-1803.
作者姓名:梁海涛  王立纲  王亮  张庆峰
作者单位:四川三星通用航空有限责任公司机务工程部,成都610051;中国民用航空飞行学院广汉分院,四川广汉618307;中国民用航空飞行学院飞行技术学院,四川广汉618307
基金项目:青年科学基金项目(12002368)
摘    要:提出注意力循环机制与胶囊网络融合的注意力循环胶囊网络(ARCN)的诊断模型。提取时序特征信息构建初级胶囊;自适应融合路由机制、注意力循环机制构建数字胶囊特征;基于西储大学轴承实验数据,验证了ARCN模型的准确率、鲁棒性、稳定性、收敛误差,其准确率相比Caps模型识别准确率提高1.2%、收敛误差达到0.2。基于实验仿真平台,采集正常、内环故障、外环故障和滚动体故障的振动信号,并通过小波基变换获取的时频图构建ARCN模型的数据集。仿真实验结果表明:ARCN模型下,每类故障被误诊的概率不超过总样本的1%。 

关 键 词:轴承故障诊断  注意力循环机制  胶囊网络  小波变换  准确率
收稿时间:2021/4/21 0:00:00

Bearing fault diagnosis based on ARCN model
LIANG Haitao,WANG Ligang,WANG Liang,ZHANG Qingfeng.Bearing fault diagnosis based on ARCN model[J].Journal of Aerospace Power,2021,36(9):1793-1803.
Authors:LIANG Haitao  WANG Ligang  WANG Liang  ZHANG Qingfeng
Institution:1.Mechanical Engineering Department, Sichuan Tri-star General Aviation Company Limited,Chengdu 610051,China2.Guanghan Flight College, Civil Aviation Flight University of China,Guanghan 618307,China3.Flight Technology College, Civil Aviation Flight University of China,Guanghan 618307,China
Abstract:The attention recurrent and capsule network (ARCN) diagnosis model was proposed by integrating the attention cycle mechanism and capsule network.Firstly,the bidirectional LSTM network was used to extract the time-series characteristic information to construct the primary capsule.Secondly,routing mechanism and attention cycle mechanism were used to construct adaptively digital capsule.The accuracy,robustness,stability and convergence error of ARCN model in bearing fault identification were verified by bearing experiment data of Western Reserve University.The accuracy of ARCN model was 1.2% higher than that of Caps model.The convergence error of the ARCN model reached 0.2.Based on the experimental simulation platform,the vibration signals of normal,inner ring fault,outer ring fault and rolling element fault were collected.The results showed that the misdiagnosis probability of each kind of fault was less than 1% of the total samples under ARCN model. 
Keywords:bearing fault diagnosis  attention recurrent  capsule network  wavelet transform  accuracy
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