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Representing elevation uncertainty in runoff modelling and flowpath mapping

机译:在径流建模和流路映射中表示高程不确定性

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Vertical inaccuracies in terrain data propagate through dispersal area subroutines to create uncertainties in runoff flowpath predictions. This study documented how terrain error sensitivities in the D8, Multiple Flow (MF), DEMON, D-Infinity and two hybrid dispersal area algorithms, responded to changes in terrain slope and error magnitude. Runoff dispersal areas were generated from convergent and divergent sections of low, medium, and high gradient 64-ha parcels using a 30 m pixel scale control digital elevation model (DEM) and an ensemble of alternative realizations of the control DEM. The ensemble of alternative DEM realizations was generated randomly to represent root mean square error (RMSE) values ranging from 0·5 to 6 m and spatial correlations of 0 to 0·999 across 180 m lag distances. Dispersal area residuals, derived by differencing output from control and ensemble simulations, were used to quantify the spatial consistency of algorithm dispersal area predictions. A maximum average algorithm consistency of 85% was obtained in steep sloping convergent terrain, and two map analysis techniques are recommended in maintaining high spatial consistencies under less optimum terrain conditions. A stochastic procedure was developed to translate DEM error into dispersal area probability maps, and thereby better represent uncertainties in runoff modelling and management. Two uses for these runoff probability maps include watershed management indices that identify the optimal areas for intercepting polluted runoff as well as Monte-Carlo-ready probability distributions that report the cumulative pollution impact of each pixel's downslope dispersal area. Copyright © 2001 John Wiley & Sons, Ltd.
机译:地形数据中的垂直误差会通过分散区域子例程传播,从而在径流流径预测中产生不确定性。这项研究记录了D8,多重流(MF),DEMON,D-Infinity和两种混合分散区域算法中的地形误差敏感性如何响应地形坡度和误差幅度的变化。使用30 m像素比例控制数字高程模型(DEM)和控制DEM的替代实现集合,从低坡度,中坡度和高坡度64公顷地块的会聚和发散部分生成径流扩散区域。随机生成替代DEM实现的合奏,以表示180 m滞后距离范围内的均方根误差(RMSE)值,范围为0·5至6 m,以及空间相关性为0至0·999。分散区域残差是通过控制和整体模拟的差分输出得出的,用于量化算法分散区域预测的空间一致性。在陡峭的倾斜会聚地形中,最大平均算法一致性为85%,建议使用两种地图分析技术在不太理想的地形条件下保持较高的空间一致性。开发了一种随机程序,将DEM误差转换为散布区域概率图,从而更好地表示径流建模和管理中的不确定性。这些径流概率图的两个用途包括:分水岭管理指数(用于识别拦截受污染径流的最佳区域)以及蒙特卡洛就绪概率分布,用于报告每个像素下坡扩散区域的累积污染影响。版权所有©2001 John Wiley&Sons,Ltd.

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