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Non-Parametric Low-Flow Frequency Analysis Using RCPs Scenario Data : A Case Study of the Gwangdong Storage Reservoir, Korea

RCPs 시나리오 자료를 이용한 비매개변수적 갈수빈도 해석: 광동댐 유역을 중심으로

  • 윤선권 (APEC 기후센터 연구본부 기후변화연구팀) ;
  • 조재필 (APEC 기후센터 연구본부 기후변화연구팀) ;
  • 문영일 (서울시립대학교 공과대학 토목공학과)
  • Received : 2013.12.18
  • Accepted : 2014.05.02
  • Published : 2014.08.01

Abstract

In this study, we applied an advanced non-parametric low-flow frequency analysis using boundary kernel by Representative Concentration Pathways (RCPs) climate change scenarios through Arc-SWAT long-term runoff model simulation at the Gwangdong storage reservoir located in Taeback, Gangwondo. The results show that drought frequency under RCPs was expected to increase due to reduced runoff during the near future, and the variation of low-flow time series was appeared greatly under RCP8.5 scenario, respectively. The result from drought frequency of Median flow in the near future (2030s) compared historic period, the case of 30-year low-flow frequency was increased (the RCP4.5 shows +22.4% and the RCP8.5 shows +40.4%), but in the distant future (2080s) expected increase of drought frequency due to the reduction of low-flow (under RCP4.5: -4.7% and RCP8.5: -52.9%), respectively. In case of Quantile 25% flow time series data also expected that the severe drought frequency will be increased in the distant future by reducing low-flow (the RCP4.5 shows -20.8% to -60.0% and the RCP8.5 shows -30.4% to -96.0%). This non-parametric low-flow frequency analysis results according to the RCPs scenarios have expected to consider to take advantage of as a basis data for water resources management and countermeasures of climate change in the mid-watershed over the Korean Peninsula.

본 연구는 광동댐 유역을 대상으로 RCPs (Representative Concentration Pathways) 기후변화 시나리오의 Arc-SWAT 적용으로 평균유출량과 저유량 계열을 구축하고 경계핵함수(Boundary Kernel)를 이용하여 비매개변수적 갈수빈도 해석을 수행하였다. 분석결과, RCPs 시나리오 하에서 가까운 미래의 유출량 감소로 인한 가뭄발생빈도가 증가하였으며, RCP8.5에서 저유량 계열의 변동폭이 크게 나타났다. Median flow의 갈수량 빈도해석결과 가까운 미래(2030s)의 30년 빈도 갈수량의 경우 Historic 기간에 비하여 증가(RCP4.5: +22.4%, RCP8.5: +40.4%)하였으나, 먼 미래(2080s)에는 갈수량 감소(RCP4.5: -4.7%, RCP8.5: -52.9%)로 인한 가뭄발생빈도가 커지는 것으로 분석되었다. 또한 Quantile 25% flow 저유량 계열의 경우 먼 미래에 빈도별 갈수량이 감소(RCP4.5: -20.8% ~ -60.0%, RCP8.5: -30.4% ~ -96.0%)하여 극심한 가뭄의 발생빈도가 커질 것으로 분석되었다. RCPs 시나리오 적용에 따른 비매개변수적 갈수빈도 해석 결과는 한반도 중권역별 수자원개발계획 수립과 기후변화 대응책 마련을 위한 기초자료로 활용이 가능할 것이다.

Keywords

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