A study in fault detection and diagnosis of induction motor by clustering and fuzzy fault tree

클러스터링과 fuzzy fault tree를 이용한 유도전동기 고장 검출과 진단에 관한 연구

  • 이성환 (현대중공업 마북리 연구소) ;
  • 신현익 (연세대학교 전기공학과) ;
  • 강신준 (연세대학교 전기공학과) ;
  • 우천희 (연세대학교 전기공학과) ;
  • 우광방 (연세대학교 전기공학과)
  • Published : 1998.02.01

Abstract

In this paper, an algorithm of fault detection and diagnosis during operation of induction motors under the condition of various loads and rates is investigated. For this purpose, the spectrum pattern of input currents is used in monitoring the state of induction motors, and by clustering the spectrum pattern of input currents, the newly occurrence of spectrum patterns caused by faults are detected. For the diagnosis of the fault detected, a fuzzy fault tree is designed, and the fuzzy relation equation representing the relation between an induction motor fault and each fault type, is solved. The solution of the fuzzy relation equation shows the possibility of occurence of each fault. The results obtained are summarized as follows : (1) Using clustering algorithm by unsupervised learning, an on-line fault detection method unaffected by the characteristics of loads and rates is implemented, and the degree of dependency for experts during fault detection is reduced. (2) With the fuzzy fault tree, the fault diagnosis process become systematic and expandable to the whole system, and the diagnosis for sub-systems can be made as an object-oriented module.

Keywords

References

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