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首页> 外文期刊>Transactions of the ASABE >Impact of land use and land cover categorical uncertainty on SWAT hydrologic modeling.
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Impact of land use and land cover categorical uncertainty on SWAT hydrologic modeling.

机译:土地利用和土地覆盖类别的不确定性对SWAT水文模型的影响。

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摘要

The land use and land cover (LULC) map of a watershed is a critical input to the Soil and Water Assessment Tool (SWAT) model. LULC is a categorical geospatial data layer that is typically developed based on models that establish relationships between pixel-based spectral reflectance and corresponding ground-truth information. Hence, LULC maps, like other classified remote-sensing datasets, are subject to error, which varies for each LULC category. The purpose of this study was to evaluate the effect of published LULC categorical errors on SWAT model uncertainty. A new algorithm was developed within the SWAT2009_LUC tool framework [see Transactions of the ASABE 54(5): 1649-1658] to produce multiple realizations of the LULC layer based on LULC categorical errors and integrate them dynamically within SWAT simulations. The enhanced SWAT2009_LUC tool and algorithm were tested for the SWAT model of the Illinois River Drainage Area in Arkansas (IRDAA) watershed. Tool evaluation results showed that the algorithm successfully integrated the LULC realizations within SWAT runs. Uncertainty evaluation showed that LULC categorical errors produced deviations in water yield output ranging from 0% to 8% at an annual scale and 0% to 19.9% at a monthly scale for the IRDAA subwatersheds. Results from this research highlight the importance of LULC categorical accuracy in the SWAT model and provide a generic tool for examining this uncertainty in any other watershed.
机译:流域的土地利用和土地覆盖(LULC)图是对土壤和水评估工具(SWAT)模型的关键输入。 LULC是一个分类的地理空间数据层,通常基于在基于像素的光谱反射率和相应的地面真相信息之间建立关系的模型来开发。因此,像其他分类的遥感数据集一样,LULC映射也容易出错,对于每个LULC类别,误差都会有所不同。这项研究的目的是评估已发布的LULC分类错误对SWAT模型不确定性的影响。在SWAT2009_LUC工具框架内开发了一种新算法[请参见ASABE 54(5):1649-1658的交易],以基于LULC分类错误产生LULC层的多种实现,并将其动态集成到SWAT模拟中。针对阿肯色州伊利诺伊河流域(IRDAA)流域的SWAT模型,测试了增强的SWAT2009_LUC工具和算法。工具评估结果表明,该算法成功地将LULC实现集成到了SWAT运行中。不确定性评估表明,对于IRDAA子流域,LULC的分类误差导致水产量的偏差在年尺度上为0%至8%,在月尺度为0%至19.9%。这项研究的结果突出说明了SWAT模型中LULC分类准确度的重要性,并提供了一种通用工具来检查任何其他流域中的这种不确定性。

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