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Analysis on the Observation Environment of Surface Wind Using GIS data

GIS 자료를 활용한 지상 바람 관측환경 분석

  • Kwon, A-Rum (Department of Environmental Atmospheric Sciences, Pukyong National University) ;
  • Kim, Jae-Jin (Department of Environmental Atmospheric Sciences, Pukyong National University)
  • 권아름 (부경대학교 환경대기과학과) ;
  • 김재진 (부경대학교 환경대기과학과)
  • Received : 2015.04.06
  • Accepted : 2015.04.23
  • Published : 2015.04.30

Abstract

In this study, the observation environment of surface wind at an automatic weather station (AWS 288) located at Naei-dong, Mirang-si was analyzed using a computational fluid dynamics (CFD) model and geographic information system (GIS). The 16 cases with different inflow directions were considered before and after construction of an apartment complex around the AWS 288. For three inflow directions (south-south-westerly, south-south-easterly, and north-north-westerly), flow characteristics around the AWS 288 were investigated in detail, focusing on the changes in wind speed and direction at the AWS location. There was marked difference in wind speed between before and after construction of the apartment complex in the south-south-westerly case. In the south-south-easterly and north-north-westerly cases which were frequently observed at the AWS 288, the construction of the apartment complex had no marked influence on the observation of surface wind.

본 연구에서는 전산유체역학 모델과 지리정보시스템 자료를 이용하여 밀양시 내이동에 위치한 자동지상관측소(AWS 288)의 지상 바람 관측환경을 분석하였다. AWS 288 인근 지역에 건축 중인 아파트 단지에 의한 관측환경 변화를 분석하기 위하여 16방위의 유입류를 고려하였다. AWS 위치에서 수치 모의된 풍속과 풍향 변화를 중점적으로 분석하였고, 3가지 유입류(남남서풍, 남남동풍, 북북서풍)에 대해서는 AWS 288 주위의 흐름 특성을 상세하게 분석하였다. 남남서풍의 경우, AWS 288 지점에서는 남서쪽에 위치한 아파트 단지의 영향으로 아파트 단지 건축 전과 후의 풍속 차이가 가장 크게 나타났다. 아파트 단지 건축 전에 상대적으로 높은 풍향 빈도가 나타난 남남동풍과 북북서풍의 경우에는 아파트 단지 건축 전 대비 건축 후의 AWS 288 지점에서 수치 모의된 풍속과 풍향 차이는 크지 않았다.

Keywords

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