基于多项式混沌正交的概率风险映射定量评价及其实际应用

IF 3.5 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
T. Tanabe, K. Tsunematsu, K. Nishimura
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引用次数: 0

摘要

雪崩对定居点及其居民构成了重大威胁。因此,描绘雪崩爆发区域的危险地图是减轻其破坏性影响的宝贵工具。动态模型被用来可视化受雪崩影响的地区;然而,这些模型需要不确定的输入。本研究通过概率密度函数对不确定输入变量进行量化,从而形成概率风险图。这些地图表示模型输出的概率,如最大流量厚度,超过特定阈值,允许进行更多的定量危害评估。采用蒙特卡罗、拉丁超立方采样和多项式混沌正交(PCQ)三种不确定性量化方法生成雪崩概率危害图。将这些地图与使用覆盖整个参数空间的参数集创建的参考危险地图进行比较。在三种方法中,PCQ在给定数量的模拟中产生最准确的结果,假设每个输入的分布均匀。然后确定最佳PCQ设置,以更少的模拟提供更好的结果。此外,提出了一种基于非均匀输入分布的PCQ应用程序,无需额外的模拟即可生成危险图。如果PCQ已经应用于均匀情况,则这种方法减少了与为非均匀分布创建危险图相关的计算成本。该应用程序生成两种类型的概率危害图:一种是使用均匀分布考虑雪季期间所有潜在参数范围,另一种是反映考虑近期当前积雪条件不确定性的非均匀分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Quantitative Evaluation of Probabilistic Hazard Mapping With Polynomial Chaos Quadrature and Its Practical Application

Quantitative Evaluation of Probabilistic Hazard Mapping With Polynomial Chaos Quadrature and Its Practical Application

Snow avalanches pose a significant threat to settlements and their inhabitants. Consequently, hazard maps that delineate avalanche runout areas serve as valuable tools for mitigating their destructive impact. Dynamic models have been used to visualize areas affected by avalanches; however, these models require uncertain inputs. This study develops probabilistic hazard maps by quantifying uncertain input variables through probability density functions. These maps represent the probability of model outputs, such as maximum flow thickness, exceeding specific thresholds, allowing for more quantitative hazard assessments. Three uncertainty quantification methods—Monte Carlo, Latin hypercube sampling, and polynomial chaos quadrature (PCQ)—are employed to generate probabilistic hazard maps for snow avalanches. These maps are compared with a reference hazard map created using parameter sets that cover the entire parameter space. Among the three methods, PCQ yields the most accurate results for a given number of simulations, assuming a uniform distribution for each input. The optimal PCQ settings, which deliver superior results with fewer simulations, are then determined. Additionally, a PCQ application is proposed to generate hazard maps based on non-uniform input distributions without requiring extra simulations. This approach reduces the computational cost associated with creating hazard maps for non-uniform distributions if PCQ has already been applied to a uniform case. The application generates two types of probabilistic hazard maps: one considering all potential parameter ranges during the snow season using uniform distributions, and another reflecting non-uniform distributions that account for uncertainty in near-term current snow cover conditions.

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来源期刊
Journal of Geophysical Research: Earth Surface
Journal of Geophysical Research: Earth Surface Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
6.30
自引率
10.30%
发文量
162
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