Progo Watershed Deliniation and River Network Analysis Using SRTM DEM and Contour DEM Hypsography of RBI 1: 25000

Bungaran Roy Satria Tambunan, P. B. Santosa
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Abstract

Watershed is a combination of waters and land areas where the boundary is topography of water separator. Watershed can be imagined as a sloping from upstream to downstream where rainwater that falls on topographic boundary will flow into river. The end of drainage system is a single outlet that boils down to larger body of water such as river, lake, or sea. Watershed can be formed based on the topography of a region. Topographic data is processed to Digital Elevation Model (DEM). DEM development can be utilized for the purposes of watershed characteristics analysis. DEM can be used for determination of watershed boundary and established river network. The characteristics of the watershed will affect hydrological behavior such as evapotranspiration, infiltration, and river flow. The result of the research shows the area of DAS based on SRTM DEM data is 218257.640 hectare, while based on RBI DEM data is 238714.236 hectare. The length of the main river Progo River based on SRTM DEM data is 133.874 Km, while based on data RBI DEM has a length of 134.689 Km. The combination of these two data produces the physical characteristics of Progo watershed quite well.
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基于SRTM DEM和等高线DEM地形的Progo流域划分与河网分析
流域是水域和陆地的结合区域,其边界是地形的水分离器。分水岭可以想象成一个从上游到下游的斜坡,落在地形边界上的雨水将流入河流。排水系统的末端是一个单一的出口,它汇集到更大的水体,如河流,湖泊或海洋。流域可以根据一个地区的地形形成。地形数据处理成数字高程模型(DEM)。DEM开发可用于流域特征分析。DEM可用于确定流域边界和建立河网。流域的特征将影响水文行为,如蒸散、入渗和河流流量。研究结果表明,基于SRTM DEM数据的DAS面积为218257.640公顷,而基于RBI DEM数据的DAS面积为238714.236公顷。基于SRTM DEM数据的主河Progo河长度为133.874 Km,而基于RBI DEM数据的主河长度为134.689 Km。结合这两种数据,可以很好地得出Progo流域的物理特征。
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