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Assessing the Influence of Land Use and Land Cover Datasets with Different Points in Time and Levels of Detail on Watershed Modeling in the North River Watershed, China

机译:评估时间和详细程度不同的土地利用和土地覆盖数据集对中国北江流域的流域建模的影响

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Land use and land cover (LULC) information is an important component influencing watershed modeling with regards to hydrology and water quality in the river basin. In this study, the sensitivity of the Soil and Water Assessment Tool (SWAT) model to LULC datasets with three points in time and three levels of detail was assessed in a coastal subtropical watershed located in Southeast China. The results showed good agreement between observed and simulated values for both monthly and daily streamflow and monthly NH4+-N and TP loads. Three LULC datasets in 2002, 2007 and 2010 had relatively little influence on simulated monthly and daily streamflow, whereas they exhibited greater effects on simulated monthly NH4+-N and TP loads. When using the two LULC datasets in 2007 and 2010 compared with that in 2002, the relative differences in predicted monthly NH4+-N and TP loads were ?11.0 to ?7.8% and ?4.8 to ?9.0%, respectively. There were no significant differences in simulated monthly and daily streamflow when using the three LULC datasets with ten, five and three categories. When using LULC datasets from ten categories compared to five and three categories, the relative differences in predicted monthly NH4+-N and TP loads were ?6.6 to ?6.5% and ?13.3 to ?7.3%, respectively. Overall, the sensitivity of the SWAT model to LULC datasets with different points in time and levels of detail was lower in monthly and daily streamflow simulation than in monthly NH4+-N and TP loads prediction. This research provided helpful insights into the influence of LULC datasets on watershed modeling.
机译:土地利用和土地覆盖(LULC)信息是影响流域水文和水质的流域建模的重要组成部分。在这项研究中,在中国东南沿海的一个亚热带流域,评估了土壤和水评估工具(SWAT)模型对具有三个时间点和三个细节级别的LULC数据集的敏感性。结果表明,每月流量和每日流量以及每月NH4 + -N和TP负荷的观测值与模拟值之间具有良好的一致性。 2002、2007和2010年的三个LULC数据集对模拟的每月和每日流量的影响相对较小,而对模拟的每月NH4 + -N和TP负荷表现出较大的影响。当使用2007年和2010年的两个LULC数据集(与2002年相比)时,预测的每月NH4 + -N和TP负荷的相对差异分别为?11.0至?7.8%和?4.8至?9.0%。当使用具有十个,五个和三个类别的三个LULC数据集时,模拟的每月和每日流量没有显着差异。当使用来自十个类别的LULC数据集而不是五个类别和三个类别的LULC数据集时,预测的每月NH4 + -N和TP负荷的相对差异分别为6.6%至6.5%和13.3%至7.3%。总体而言,在每月和每天的流量模拟中,SWAT模型对具有不同时间点和详细程度的LULC数据集的敏感性要低于每月的NH4 + -N和TP负荷预测。这项研究为LULC数据集对流域建模的影响提供了有益的见解。

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