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Water temperature assessment on the small ecological stream under climate change

기후변화에 따른 소하천에서의 수온 모의연구

  • Park, Jung Sool (Nakdong Flood Control Office, Ministry of Land, Infrastructure and Transport) ;
  • Kim, Sam Eun (Data Quality Management Departmant, Hydrological Survey Center) ;
  • Kwak, Jaewon (Nakdong Flood Control Office, Ministry of Land, Infrastructure and Transport) ;
  • Kim, Jungwook (Department of Civil Engineering, Inha University) ;
  • Kim, Hung Soo (Department of Civil Engineering, Inha University)
  • 박정술 (국토교통부 낙동강홍수통제소) ;
  • 김삼은 (유량조사사업단 품질정책실) ;
  • 곽재원 (국토교통부 낙동강홍수통제소) ;
  • 김정욱 (인하대학교 사회인프라공학과) ;
  • 김형수 (인하대학교 사회인프라공학과)
  • Received : 2016.08.08
  • Accepted : 2016.08.29
  • Published : 2016.08.31

Abstract

Water temperature affects physical and biological processes in ecologies on river system and is important conditions for growth rate and spawning of fish species. The objective of this study is to compare models for water temperature during the summer season for the Fourchue River (St-Alexandre-de-Kamouraska, Quebec, Canada). For this, three different models, which are CEQUEAU, Auto-regressive Moving Average with eXogenous input and Nonlinear Autoregressive with eXogenous input, were applied and compared. Also, future water temperature in the Fourchue river were simulated and analyzed its result based on the CMIP5 climate models, RCP 2.6, 4.5, 8.5 climate change scenarios. As the result of the study, the water temperature in the Fourchue river are actually changed and median water temperature will increase $0.2{\sim}0.7^{\circ}C$ in June and could decrease by $0.2{\sim}1.1^{\circ}C$ in September. Also, the UILT ($24.9^{\circ}C$) for brook trout are also likely to occurred for several days.

수온은 하천의 물리적 생물학적 과정에 지대한 영향을 미치는 인자로서 어류를 비롯한 수생생태계에 대한 제약조건으로 작용한다. 기후변화로 인하여 실질적인 환경의 변화가 나타나고 있는 현실에서 수온 변화에 대한 예측은 필수적이라 하겠다. 본 연구의 목적은 자연 소하천을 대상으로 하천 수온을 모의 및 그 효율을 비교 분석하고, 향후 기후변화로 인한 하천 수온의 변동을 고찰하는 것이다. 이를 위하여 본 연구에서는 캐나다 동북부의 Fourchue 강을 대상으로 하여 2011년부터 2014년까지의 하천수온을 측정하고 결정론적, 확률론적, 비선형 수온모형을 적용하여 각각의 방법론에 따른 효율성을 비교 분석하여 미래 수온 모의를 위한 모형으로 결정론적 모형인 CEQUEAU 모형을 선정하였다. 또한, 선정된 모형을 기반으로 하여 CMIP5 기후모형과 RCP 2.6, 4.5, 8.5 기후변화 시나리오를 이용하여 해당 소하천 유역의 미래 수온 변동성을 예측하고 분석하였다. 연구결과, Fourchue 강의 수온은 6월 중 평균 수온은 $0.2{\sim}0.7^{\circ}C$가 상승하고, 9월은 $0.2{\sim}1.1^{\circ}C$가 감소하는 것으로 나타나 실질적인 수온환경의 변화가 발생하는 것으로 나타나서 이에 대한 주의가 요구된다. 또한, 해당 수역에 서식하고 있는 연어류의 치사상한수온을 넘는 경우도 발생하여 이에 대한 대책이 시급한 것으로 판단된다.

Keywords

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