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基于系统信息融合的滚动轴承故障模式识别
引用本文:秦海勤,徐可君,隋育松. 基于系统信息融合的滚动轴承故障模式识别[J]. 振动、测试与诊断, 2011, 31(3)
作者姓名:秦海勤  徐可君  隋育松
作者单位:海军航空工程学院青岛分院航空机械系,青岛,266041
摘    要:基于滚动轴承故障模式识别的随机性、灰色性和模糊性特征,从信息融合的角度出发,提出了一种融合框架.首先针对这三方面的信息分别从小波域、幅域和频域构造特征向量;然后借助于D-S证据理论,在基于概率统计的隐马尔科夫模型的诊断结果基础之上,进一步融合从系统灰色性和模糊性观点出发所得的诊断信息,从而实现滚动轴承故障模式的多角度信息融合识别;最后,利用该融合框架对实测滚动轴承故障数据进行了识别.结果表明,基于系统随机性、灰色性和模糊性信息融合的识别方法较基于系统单一性信息的识别方法能够进一步提高模式分类的正确率.

关 键 词:信息融合  模式识别  滚动轴承  隐马尔科夫模型  灰关联度  模糊识别

Rolling Bearing Fault Pattern Recognition Based on Fusing Random, Gray and Fuzzy Information
Qin Haiqin,Xu Kejun,Sui Yusong,Yu Shisheng. Rolling Bearing Fault Pattern Recognition Based on Fusing Random, Gray and Fuzzy Information[J]. Journal of Vibration,Measurement & Diagnosis, 2011, 31(3)
Authors:Qin Haiqin  Xu Kejun  Sui Yusong  Yu Shisheng
Affiliation:Qin Haiqin,Xu Kejun,Sui Yusong,Yu Shisheng (Department of Aviation Mechanism,Qingdao Branch of Naval Aviation Engineering Institute Qingdao,266041,China)
Abstract:Based on the characteristics of random,gray and fuzzy information in the process of rolling bearing fault pattern recognition,a new fuse frame is presented by the view of information fusion.The characteristic vectors are calculated from wavelet,amplitude and frequency domain information,and the evidence theory is used.The diagnose result is gained by Hidden Markov Mode.Then,the recognition results from the view of gray and fuzzy are obtained.Results are fused so that rolling bearing fault pattern can be ide...
Keywords:information fuse pattern recognition rolling bearing hidden Markov mode gray degree of association fuzzy recognition  
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