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Evaluation of land use/land cover datasets for urban watershed modeling

机译:评价城市流域模型的土地利用/土地覆盖数据集

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Land use/land cover (LULC) data are a vital component for nonpoint source pollution modeling. Most watershed hydrology and pollutant loading models use, in some capacity, LULC information to generate runoff and pollutant loading estimates. Simple equation methods predict runoff and pollutant loads using runoff coefficients or pollutant export coefficients that are often correlated to LULC type. Complex models use input variables and parameters to represent watershed characteristics, and pollutant buildup and washoff rates as a function of LULC type. Whether using simple or complex models an accurate LULC dataset with an appropriate spatial resolution and level of detail is paramount for reliable predictions. The study presented in this paper compared and evaluated several LULC dataset sources for application in urban environmental modeling. The commonly used USGS LULC datasets have coarser spatial resolution and lower levels of classification than other LULC datasets. In addition, the USGS datasets do not accurately represent the land use in areas that have undergone significant land use change during the past two decades. We performed a watershed modeling analysis of three urban catchments in Los Angeles, California, USA to investigate the relative difference in average annual runoff volumes and total suspended solids (TSS) loads when using the USGS LULC dataset versus using a more detailed and current LULC dataset. When the two LULC datasets were aggregated to the same land use categories, the relative differences in predicted average annual runoff volumes and TSS loads from the three catchments were 8 to 14% and 13 to 40%, respectively. The relative differences did not have a predictable relationship with catchment size. [References: 15]
机译:土地利用/土地覆盖(LULC)数据是非点源污染建模的重要组成部分。大多数流域水文和污染物负荷模型在某种程度上都使用LULC信息来生成径流和污染物负荷估算值。简单的方程方法使用经常与LULC类型相关的径流系数或污染物出口系数来预测径流和污染物负荷。复杂的模型使用输入变量和参数来表示流域特征,以及污染物积累和冲刷率作为LULC类型的函数。无论使用简单模型还是复杂模型,具有适当空间分辨率和详细程度的准确LULC数据集对于可靠的预测都是至关重要的。本文提出的研究比较和评估了几种LULC数据集来源,可用于城市环境建模。常用的USGS LULC数据集比其他LULC数据集具有更粗糙的空间分辨率和更低的分类级别。此外,USGS数据集不能准确代表过去二十年来发生重大土地利用变化的地区的土地利用。我们对美国加利福尼亚州洛杉矶的三个城市集水区进行了分水岭建模分析,以调查使用USGS LULC数据集与使用更详细的当前LULC数据集时的年均径流量和总悬浮固体(TSS)负载的相对差异。 。当将两个LULC数据集汇总到相同的土地利用类别时,来自三个流域的预计年平均径流量和TSS负荷的相对差异分别为8%至14%和13%至40%。相对差异与流域规模没有可预测的关系。 [参考:15]

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