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  <title>Comparison of SWAT-based Ecohydrological Modeling in the Rawa Pening Catchment Area, Indonesia</title>
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  <namePart>A. V. Amalia...[et al.]</namePart>
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  <publisher>Serial JPII: Jurnal Pendidikan IPA Indonesia</publisher>
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  <languageTerm type="code">ind</languageTerm>
  <languageTerm type="text">Indonesia</languageTerm>
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  <extent>Sumber artikel:Jurnal. Halaman: 1-11</extent>
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 <note>Abstract    The Soil and Water Assessment Tool (SWAT) is an ecohydrological model widely applied to assess water quality and watershed management. This tool also has the advantage of building watershed models even with limited monitoring data availability. The essential data required by this tool includes digital elevation models (DEM)  land use maps  climate data  and soil data. Nonetheless  the availability of spatial data is still often a challenge in developing hydrological models  especially in developing countries such as Indonesia. This research will compare the accuracy of freely available data in Indonesia in facilitating the development of hydrological models from SWAT in the Rawa Pening catchment area. This research is crucial since Rawa Pening Lake is a priority lake for revitalization  so the research results will help provide suggestions regarding presenting data in SWAT modeling. This research compares SWAT models built from different land use and DEM (Digital Elevation Models) data. The land use data being compared is the result of processing from the Google Earth Engine (GEE) platform using machine learning with land use data from government agencies  namely the Ministry of Environment and Forestry  while the DEM data being compared is SRTM and DEMNAS data. The validation results using R  R2  RMSE  and NSE show that  in general  the model built from land use from GEE is the best compared to the other models. In modeling SWAT in Indonesia  we recommend using good-quality land-use data. Utilizing supervised classification through Random Forest (RF) algorithms within GEE can facilitate the acquisition of this data. To reduce computation time  the DEM can be SRTM with a small sacrifice of accuracy.        Keywords  DEM  Google Earth Engine  land use  SWAT  streamflow       </note>
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  <topic>1. EKOHIDROLOGI - MODEL SOIL AND WATER ASSESSMENT TOOL (SWAT)</topic>
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 <classification>500 JPI</classification>
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  <physicalLocation>UPT Perpustakaan UM Koleksi Bahan Pustaka Perpustakaan UM</physicalLocation>
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