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A Monitoring Algorithm using FCM and ELM for Power Transformer

FCM과 ELM을 이용한 전력용 변압기의 모니터링 알고리즘

  • Received : 2012.11.06
  • Accepted : 2012.11.20
  • Published : 2012.12.01

Abstract

In power system, substation facilities have become too complex and larger according to an extended power system. Also, customers require the high quality of electrical power system. However, some facilities become old and often break down unexpectedly. The unexpected failure may cause a break in power system and loss of profits. Therefore it is important to prevent abrupt faults by monitoring the condition of power systems. Among the various power facilities, power transformers play an important role in the transmission and distribution systems. In this research, we develop intelligent diagnosis technique for monitoring of power transformer by FCM(Fuzzy c-means) and ELM(Extreme Learning Machine). The proposed technique make it possible to diagnosis the faults occurred in transformer. To demonstrate the validity of proposed method, various experiments are performed and their results are presented.

Keywords

References

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