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Abnormality Degree Detection Method Using Negative Potential Field Group Detectors 被引量:1
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作者 ZHANG Hongli LIU Shulin +3 位作者 LI Dong SHI Kunju WANG Bo CUI Jiqiang 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2015年第5期983-993,共11页
Online monitoring methods have been widely used in many major devices, however the normal and abnormal states of equipment are estimated mainly based on the monitoring results whether monitored parameters exceed the s... Online monitoring methods have been widely used in many major devices, however the normal and abnormal states of equipment are estimated mainly based on the monitoring results whether monitored parameters exceed the setting thresholds. Using these monitoring methods may cause serious false positive or false negative results. In order to precisely monitor the state of equipment, the problem of abnormality degree detection without fault sample is studied with a new detection method called negative potential field group detectors(NPFG-detectors). This method achieves the quantitative expression of abnormality degree and provides the better detection results compared with other methods. In the process of Iris data set simulation, the new algorithm obtains the successful results in abnormal detection. The detection rates for 3 types of Iris data set respectively reach 100%, 91.6%, and 95.24% with 50% training samples. The problem of Bearing abnormality degree detection via an abnormality degree curve is successfully solved. 展开更多
关键词 negative potential field group detector(NPFG-detector) data negative Gaussian field kernel density estimation abnormality degree
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