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Improvement of overtopping risk evaluations using probabilistic concepts for existing dams

机译:使用概率概念改善现有大坝的超限风险评估

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摘要

Hydrologic risk analysis for dam safety relies on a series of probabilistic analyses of rainfall-runoff and flow routing models, and their associated inputs. This is a complex problem in that the probability distributions of multiple independent and derived random variables need to be estimated in order to evaluate the probability of dam overtopping. Typically, parametric density estimation methods have been applied in this setting, and the exhaustive Monte Carlo simulation (MCS) of models is used to derive some of the distributions. Often, the distributions used to model some of the random variables are inappropriate relative to the expected behaviour of these variables, and as a result, simulations of the system can lead to unrealistic values of extreme rainfall or water surface levels and hence of the probability of dam overtopping. In this paper, three major innovations are introduced to address this situation. The first is the use of nonparametric probability density estimation methods for selected variables, the second is the use of Latin Hypercube sampling to improve the efficiency of MCS driven by the multiple random variables, and the third is the use of Bootstrap resampling to determine initial water surface level. An application to the Soyang Dam in South Korea illustrates how the traditional parametric approach can lead to potentially unrealistic estimates of dam safety, while the proposed approach provides rather reasonable estimates and an assessment of their sensitivity to key parameters.
机译:大坝安全的水文风险分析依赖于降雨径流和水流路径模型及其相关输入的一系列概率分析。这是一个复杂的问题,因为需要估计多个独立的和派生的随机变量的概率分布,以便评估大坝超车的可能性。通常,在此设置中已应用了参数密度估计方法,并且使用了模型的详尽的蒙特卡洛模拟(MCS)来得出某些分布。通常,用于对一些随机变量进行建模的分布相对于这些变量的预期行为而言是不合适的,因此,系统的模拟可能会导致极端降雨或水面水位的不切实际值,并因此导致坝顶。本文介绍了三种主要的创新方法来解决这种情况。首先是对选定变量使用非参数概率密度估计方法,其次是使用拉丁超立方体采样来提高由多个随机变量驱动的MCS的效率,其次是使用Bootstrap重采样来确定初始水表面水平。韩国Soyang大坝的一项应用说明了传统的参数方法如何导致潜在的不切实际的大坝安全性估算,而拟议的方法则提供了相当合理的估算以及对关键参数敏感性的评估。

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