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A Dual Monte Carlo Approach to Estimate Model Uncertainty and its Application to the Rangeland Hydrology and Erosion Model

机译:估计模型不确定性的双重蒙特卡洛方法及其在牧场水文侵蚀模型中的应用

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摘要

Natural resources models serve as important tools to support decision making by predicting environmental indicators. All model predictions have uncertainty associated with them. Model predictive uncertainty, often expressed as the confidence interval around a model prediction value, may serve as important supplementary information for assisting decision making processes. In this article, we describe a new method called Dual Monte Carlo (DMC) to calculate model predictive uncertainty based on input parameter uncertainty. DMC uses two Monte Carlo sampling loops, which enable model users to not only calculate the model predictive uncertainty for selected input parameter sets of particular interest, but also to examine the predictive uncertainty as a function of model inputs across the full range of parameter space. We illustrate the application of DMC to the process-based, rainfall event-driven Rangeland Hydrology and Erosion Model (RHEM). The results demonstrate that DMC effectively generated model predictive uncertainty from input parameter uncertainty and provided information that could be useful for decision making. We found that for the model RHEM, the uncertainty intervals were strongly correlated to specific model input and output parameter values, yielding regression relationships (r 2 > 0.97) that enable accurate estimation of the uncertainty interval for any point in the input parameter space without the need to run the Monte Carlo simulations each time the model is used. Soil loss predictions and their associated uncertainty intervals for three example storms and three site conditions are used to illustrate how DMC can be a useful tool for directing decision making.
机译:自然资源模型是通过预测环境指标来支持决策的重要工具。所有模型预测都具有不确定性。模型预测不确定性通常表示为模型预测值周围的置信区间,可以作为辅助决策过程的重要补充信息。在本文中,我们描述了一种称为双重蒙特卡洛(DMC)的新方法,用于基于输入参数不确定性来计算模型预测不确定性。 DMC使用两个蒙特卡洛采样环,这使模型用户不仅可以为特定关注的选定输入参数集计算模型预测不确定性,还可以在整个参数空间范围内根据模型输入来检查预测不确定性。我们说明了DMC在基于过程的降雨事件驱动的兰德兰水文侵蚀模型(RHEM)中的应用。结果表明,DMC有效地根据输入参数不确定性生成了模型预测不确定性,并提供了可用于决策的信息。我们发现,对于模型RHEM,不确定性区间与特定模型的输入和输出参数值密切相关,从而产生回归关系(r 2> 0.97),从而可以准确估计输入参数空间中任意点的不确定性区间。每次使用模型时都需要运行Monte Carlo模拟。针对三个示例性暴风雨和三个现场条件的土壤流失预测及其相关的不确定性区间,用于说明DMC如何成为指导决策的有用工具。

著录项

  • 来源
    《Transactions of the ASABE》 |2008年第2期|p.515-520|共6页
  • 作者单位

    The authors are Haiyan Wei, ASABE Member, Research Specialist, Mark A. Nearing, Research Leader, and Jeffry J. Stone, Research Hydrologist, USDA-ARS Southwest Watershed Research Center, Tucson, Arizona;

    and David D. Breshears, Professor, School of Natural Resources, Institute for the Study of Planet Earth, and Department of Ecology and Evolutionary Biology, University of Arizona, Tucson, Arizona. Corresponding author: Haiyan Wei, USDA-ARS Southwest Watershed Research Center, Tucson, AZ 85719;

    phone: 520-670-6381, ext. 145;

    fax: 520-670-5550;

    e-mail: haiyan.wei@ars.usda.gov.;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Decision making, Model predictive uncertainty, RHEM, Soil erosion;

    机译:决策;模型预测不确定性;RHEM;土壤侵蚀;

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