...
首页> 外文期刊>Stochastic environmental research and risk assessment >Quantification of predictive uncertainty with a metamodel: toward more efficient hydrologic simulations
【24h】

Quantification of predictive uncertainty with a metamodel: toward more efficient hydrologic simulations

机译:用元模型定量预测不确定性:朝着更有效的水文模拟

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Hydrologic flood prediction has been a quite complex and difficult task because of various sources of inherent uncertainty. Accurately quantifying these uncertainties plays a significant role in providing flood warnings and mitigating risk, but it is time-consuming. To offset the cost of quantifying the uncertainty, we adopted a highly efficient metamodel based on polynomial chaos expansion (PCE) theory and applied it to a lumped, deterministic rainfall-runoff model (NedbOr-AfstrOmnings model, NAM) combined with generalized likelihood uncertainty estimation (GLUE). The central conclusions are: (1) the subjective aspects of GLUE (e.g., the cutoff threshold values of likelihood function) are investigated for 8 flood events that occurred in the Thu bon river watershed in Vietnam, resulting that the values of 0.82 for Nash-Sutcliffe efficiency, 4.05% for peak error, and 4.35% for volume error are determined as the acceptance thresholds. Moreover, the number of ensemble behavioral sets required to maintain the sufficient range of uncertainty but to avoid any unnecessary computation was set to 500. (2) The number of experiment designs (N) and degree of polynomial (p) are key factors in estimating PCE coefficients, and values of N=50 and p=4 are preferred. (3) The results computed using a PCE model consisting of polynomial bases are as good as those given by the NAM, while the total times required for making an ensemble in the PCE model are approximately seventeen times faster. (4) Two parameters (CQOF and CK12) turned out to be most dominant based on a visual inspection of the posterior distribution and the mathematical computations of the Sobol' and Morris sensitivity analysis. Identification of the posterior parameter distributions from the calibration process helps to find the behavioral sets even faster. The unified framework that presents the most efficient ways of predicting flow regime and quantifying the uncertainty without deteriorating accuracy will ultimately be helpful for providing warnings and mitigating flood risk in a timely manner.
机译:由于固有的不确定性的各种来源,水文洪水预测是一个非常复杂和艰巨的任务。准确量化这些不确定性在提供洪水警告和缓解风险方面发挥着重要作用,但它是耗时的。为了抵消量化不确定性的成本,我们基于多项式混沌扩展(PCE)理论采用了一种高效的元模型,并将其应用于集体,确定性的降雨 - 径流模型(Nedbor-Formromnings Model,Nam)与广义似然不确定性估算相结合(胶水)。中央结论是:(1)胶水的主观方面(例如,偶然函数的截止阈值值)被调查了越南星期四的洪水流域发生的8次洪水事件,导致纳什的值为0.82 Sutcliffe效率,峰值误差4.05%,体积误差4.35%被确定为验收阈值。此外,保持足够范围的不确定度但避免任何不必要的计算所需的集合行为集的数量被设定为500.(2)实验设计(N)和多项式(P)的程度是估计的关键因素PCE系数和n = 50和p = 4的值是优选的。 (3)使用由多项式碱基组成的PCE模型计算的结果与NAM给出的那样良好,而在PCE模型中制作集合所需的总时间速度速度大约为大约十七次。 (4)两种参数(CKOF和CK12)基于对后验分布和莫里斯敏感性分析的目视检查和数学计算的最主要程度。从校准过程中识别后参数分布有助于找到甚至更快的行为集。统一的框架,呈现最有效的方式来预测流动制度并在不恶化的情况下量化不确定性的不确定性将最终有助于及时提供警告和减轻洪水风险。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号