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首页> 外文期刊>Earth Surface Processes and Landforms: The journal of the British Geomorphological Research Group >The implications of data selection for regional erosion and sediment yield modelling
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The implications of data selection for regional erosion and sediment yield modelling

机译:数据选择对区域侵蚀和沉积物产量模拟的意义

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摘要

Regional environmental models often require detailed data on topography, land cover, soil, and climate. Remote sensing derived data form an increasingly important source of information for these models. Yet, it is often not easy to decide what the most feasible source of information is and how different input data affect model outcomes. This paper compares the quality and performance of remote sensing derived data for regional soil erosion and sediment yield modelling with the WATEM-SEDEM model in south-east Spain. An ASTER-derived digital elevation model (DEM) was compared with the DEM obtained from the Shuttle Radar Topography Mission (SRTM), and land cover information from the CORINE database (CLC2000) was compared with classified ASTER satellite images. The SRTM DEM provided more accurate estimates of slope gradient and upslope drainage area than the ASTER DEM. The classified ASTER images provided a high accuracy (90%) land cover map, and due to its higher resolution, it showed a more fragmented landscape than the CORINE land cover data. Notwithstanding the differences in quality and level of detail, CORINE and ASTER land cover data in combination with the SRTM DEM or ASTER DEM allowed accurate predictions of sediment yield at the catchment scale. Although the absolute values of erosion and sediment deposition were different, the qualitative spatial pattern of the major sources and sinks of sediments was comparable, irrespective of the DEM and land cover data used. However, clue to its lower accuracy, the quantitative spatial pattern of predictions with the ASTER DEM will be worse than with the SRTM DEM. Therefore, the SRTM DEM in combination with ASTER-derived land cover data presumably provide most accurate spatially distributed estimates of soil erosion and sediment yield. Nevertheless, model calibration is required for each data set and resolution and validation of the spatial pattern of predictions is urgently needed.
机译:区域环境模型通常需要有关地形,土地覆盖,土壤和气候的详细数据。遥感衍生数据构成了这些模型越来越重要的信息来源。但是,通常很难决定最可行的信息源是什么以及不同的输入数据如何影响模型结果。本文将遥感数据的质量和性能与西班牙东南部的WATEM-SEDEM模型进行了比较,用于区域土壤侵蚀和沉积物产量模拟。将ASTER衍生的数字高程模型(DEM)与从航天飞机雷达地形任务(SRTM)获得的DEM进行比较,并将来自CORINE数据库(CLC2000)的土地覆盖信息与分类的ASTER卫星图像进行比较。与ASTER DEM相比,SRTM DEM可以更准确地估计坡度和上坡排水面积。分类的ASTER图像提供了高精度(90%)的土地覆盖图,并且由于其分辨率更高,因此与CORINE土地覆盖数据相比,它的景观更加零碎。尽管质量和详细程度有所不同,但将CORINE和ASTER土地覆盖数据与SRTM DEM或ASTER DEM结合使用仍可以准确预测集水规模的沉积物产量。尽管侵蚀和沉积物沉积的绝对值不同,但无论使用的DEM和土地覆盖数据如何,主要沉积物源和汇的定性空间格局都是可比的。但是,由于其准确性较低,因此使用ASTER DEM进行预测的定量空间模式将比使用SRTM DEM进行的预测差。因此,SRTM DEM与ASTER得出的土地覆盖数据相结合,可以提供土壤侵蚀和沉积物产量的最准确的空间分布估计。然而,每个数据集都需要模型校准,并且迫切需要分辨率和预测空间模式的验证。

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