Computer Science ›› 2023, Vol. 50 ›› Issue (5): 217-229.doi: 10.11896/jsjkx.220400096

• Artificial Intelligence • Previous Articles     Next Articles

Overview of Intelligent Radar Fault Prediction and Detection Technology

ZHAI Yuting1,2, CHENG Zhanxin2, FANG Shaojun1   

  1. 1 College of Information Science and Technology,Dalian Maritime University,Dalian,Liaoning 116026,China
    2 Department of Information Systems,Dalian Naval Academy,Dalian,Liaoning 116018,China
  • Received:2022-04-11 Revised:2022-07-06 Online:2023-05-15 Published:2023-05-06
  • About author:ZHAI Yuting,born in 1988,Ph.D candidate,lecturer.Her main researchintere-sts include radar fault prognosis,artificial intelligence and data processing.
    FANG Shaojun,born in 1957,Ph.D,professor,Ph.D supervisor.His main research interests include antennas,microwave transmission lines,and microwave measurement.
  • Supported by:
    National Natural Science Foundation of China(51809030).

Abstract: Radar fault prediction and fault detection technology is the key technology for the transformation of radar equipment maintenance from traditional regular maintenance to intelligent condition-based maintenance.To ensure the performance of radar combat effectiveness,it is necessary to predict,detect and give real-time warnings to radar fault in time.With the maturity of microwave measurement and artificial intelligence technology,intelligent radar fault prediction and detection technology also conti-nues to develop.In this paper,the current research status of fault prediction and health management and fault detection technology at home and abroad are elaborated,the advantages and disadvantages of the existing intelligent radar fault prediction and detection technology are analyzed,the research progress of this technology in the field of radar maintenance support has been sorted out,possible problems and limitations in radar failure prediction and detection are presented.Aiming at the actual problems and constraints,the future research direction of intelligent radar fault prediction and detection technology are prospected,which can provide a reference for the in-depth research of intelligent fault prediction and fault detection technology in the field of radar maintenance support.

Key words: Prognostic and health management, Fault prediction, Fault detection, Radar fault

CLC Number: 

  • TN956
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