124 / 2023-09-20 15:21:42
Transformer Fault Diagnosis Method Based on Deep Belief Networks and DSmT
transformer fault diagnosis,DSmT,information fusion,high conflict evidence,deep belief networks,basic belief assignment
Final Paper
Haochuan Fu / State Grid Jibei Electric Power Co. Ltd. EHV Power Transmission Company
According to the deficiency of traditional machine learning theory and the present situation that the state features of reference are single in transformer fault diagnosis, a transformer fault diagnosis method is put foward based on Deep Belief Networks(DBN) and DSmT (Dezert-Smarandache theory). The on-line monitoring data and test data which can reflect the transformer fault information are chosen as the diagnostic parameters. A parallel training unit is constructed with DBN and DSmT (Dezert-Smarandache theory). training unit is constructed with DBN to construct the basic belief assignment (BBA) for the transformer fault recognition framework. Based on the idea of information fusion, we can get the basic belief assignment for the transformer fault recognition framework. Based on the idea of information fusion, we can get the final diagnosis conclusion applying DSmT theory to fusing BBA with the family defect record, which overcomes the limitations of D-S evidence theory that the family defect record can be identified by the BBA. limitations of D-S evidence theory that can not solve the fusion problem of high conflict evidence. Through an example of a 110kV transformer, the result shows that this method has good practicability.
Important Date
  • Conference Date

    Nov 02

    2023

    to

    Nov 04

    2023

  • Dec 15 2023

    Draft paper submission deadline

  • Dec 20 2023

    Registration deadline

Sponsored By
IEEE Instrumentation and Measurement Society
Xidian University