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The Value of Empirical Data for Estimating the Parameters of a Sociohydrological Flood Risk Model

机译:经验数据对估算社会水文洪水风险模型参数的价值

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摘要

In this paper, empirical data are used to estimate the parameters of a sociohydrological flood risk model. The proposed model, which describes the interactions between floods, settlement density, awareness, preparedness, and flood loss, is based on the literature. Data for the case study of Dresden, Germany, over a period of 200 years, are used to estimate the model parameters through Bayesian inference. The credibility bounds of their estimates are small, even though the data are rather uncertain. A sensitivity analysis is performed to examine the value of the different data sources in estimating the model parameters. In general, the estimated parameters are less biased when using data at the end of the modeled period. Data about flood awareness are the most important to correctly estimate the parameters of this model and to correctly model the system dynamics. Using more data for other variables cannot compensate for the absence of awareness data. More generally, the absence of data mostly affects the estimation of the parameters that are directly related to the variable for which data are missing. This paper demonstrates that combining sociohydrological modeling and empirical data gives additional insights into the sociohydrological system, such as quantifying the forgetfulness of the society, which would otherwise not be easily achieved by sociohydrological models without data or by standard statistical analysis of empirical data.
机译:在本文中,经验数据用于估算社会水文洪水风险模型的参数。该模型基于文献,描述了洪水,沉降密度,意识,备灾和洪水损失之间的相互作用。通过200年的时间,对德国德累斯顿的案例研究数据用于通过贝叶斯推断估计模型参数。即使数据不确定,他们的估计的可信度范围也很小。进行敏感性分析以检查估计模型参数时不同数据源的值。通常,在建模周期结束时使用数据时,估计参数的偏差较小。有关洪水意识的数据对于正确估计该模型的参数以及正确地对系统动力学建模是最重要的。对其他变量使用更多数据无法弥补意识数据的缺失。更一般地,数据的缺乏主要影响与缺少数据的变量直接相关的参数的估计。本文证明,将社会水文学模型和经验数据相结合,可以提供对社会水文学系统的更多见解,例如量化社会的健忘性,否则,没有数据的社会水文学模型或对经验数据进行标准的统计分析将很难实现这一目标。

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