대한전기학회:학술대회논문집 (Proceedings of the KIEE Conference)
- 대한전기학회 2000년도 하계학술대회 논문집 A
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- Pages.366-368
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- 2000
신경회로망과 고장전류의 변화를 이용한 고장판별 알고리즘에 관한 연구
A Study on the Algorithm for Fault Discrimination in Transmission Lines Using Neural Network and the Variation of Fault Currents
- Yeo, Sang-Min (Sungkyunkwan Univ.) ;
- Kim, Chul-Hwan (Sungkyunkwan Univ.) ;
- Choi, Myeon-Song (Myongji Univ.) ;
- Song, Oh-Young (Chungang Univ.)
- 발행 : 2000.07.17
초록
When faults occur in transmission lines, the classification of faults is very important. If the fault is HIF(High Impedance Fault), it cannot be detected or removed by conventional overcurrent relays (OCRs), and results in fire hazards and causes damages in electrical equipment or personal threat. The fast discrimination of fault needs to effective protection and treatment and is important problem for power system protection. This paper proposes the fault detection and discrimination algorithm for LIFs(Low Impedance Faults) and HIFs(High Impedance Faults). This algorithm uses artificial neural networks and variation of 3-phase maximum currents per period while faults. A double lines-to-ground and line-to-line faults can be detected using Neural Network. Also, the other faults can be detected using the value of variation of maximum current. Test results show that the proposed algorithms discriminate LIFs and HIFs accurately within a half cycle.
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