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首页> 外文期刊>Journal of the American Water Resources Association >GIS-BASED PREDICTIVE MODELS OF HILLSLOPE RUNOFF GENERATION PROCESSES
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GIS-BASED PREDICTIVE MODELS OF HILLSLOPE RUNOFF GENERATION PROCESSES

机译:基于GIS的坡面径流产生过程预测模型。

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摘要

Successful nonpoint source pollution control using best management practice placement is a complex process that requires in-depth knowledge of the locations of runoff source areas in a watershed. Currently, very few simulation tools are capable of identifying critical runoff source areas on hillslopes and those available are not directly applicable under all runoff conditions. In this paper, a comparison of two geographic information system (GIS)-based approaches: a topographic index model and a likelihood indicator model is presented, in predicting likely locations of saturation excess and infiltration excess runoff source areas in a hillslope of the Savoy Experimental Watershed located in northwest Arkansas. Based on intensive data collected from a two-year field study, the spatial distributions of hydrologic variables were processed using GIS software to develop the models. The likelihood indicator model was used to produce probability surfaces that indicated the likelihood of location of both saturation and infiltration excess runoff mechanisms on the hillslope. Overall accuracies of the likelihood indicator model predictions varied between 81 and 87% for the infiltration excess and saturation excess runoff locations respectively. On the basis of accuracy of prediction, the likelihood indicator models were found to be superior (accuracy 81-87%) to the predications made by the topographic index model (accuracy 69.5%). By combining statistics with GIS, runoff source areas on a hillslope can be identified by incorporating easily determined hydrologic measurements (such as bulk density, porosity, slope, depth to bed rock, depth to water table) and could serve as a watershed management tool for identifying critical runoff source areas in locations where the topographic index or other similar methods do not provide reliable results.
机译:使用最佳管理实践方法成功地进行面源污染控制是一个复杂的过程,需要深入了解流域中径流源区域的位置。目前,很少有模拟工具能够识别斜坡上的关键径流源区域,而可用的那些工具并不能直接适用于所有径流条件。在本文中,比较了两种基于地理信息系统(GIS)的方法:地形指数模型和可能性指标模型,用于预测Savoy实验山坡中饱和度过剩和入渗过剩径流源区域的可能位置分水岭位于阿肯色州西北部。根据为期两年的实地研究收集的大量数据,使用GIS软件处理水文变量的空间分布,以开发模型。可能性指标模型用于生成概率表面,该概率表面指示饱和度和入渗过量径流机制在山坡上的位置的可能性。对于入渗过量和饱和过量径流位置,似然指标模型预测的总体准确性分别在81%和87%之间变化。根据预测的准确性,发现似然指标模型优于地形指数模型所作的预测(准确性为69.5%)(准确性为81-87%)。通过将统计数据与GIS相结合,可以通过合并容易确定的水文测量数据(例如堆积密度,孔隙率,坡度,基岩深度,地下水位)来识别山坡上的径流源区域,并且可以用作流域管理工具在地形指数或其他类似方法无法提供可靠结果的位置识别关键径流源区域。

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