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首页> 外文期刊>Hydrology and Earth System Sciences >Bayesian uncertainty assessment of flood predictions in ungauged urban basins for conceptual rainfall-runoff models
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Bayesian uncertainty assessment of flood predictions in ungauged urban basins for conceptual rainfall-runoff models

机译:用于概念性降雨径流模型的无应力城市盆地洪水预报的贝叶斯不确定性评估

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摘要

Urbanization and the resulting land-use change strongly affect the water cycle and runoff-processes in watersheds. Unfortunately, small urban watersheds, which are most affected by urban sprawl, are mostly ungauged. This makes it intrinsically difficult to assess the consequences of urbanization. Most of all, it is unclear how to reliably assess the predictive uncertainty given the structural deficits of the applied models. In this study, we therefore investigate the uncertainty of flood predictions in ungauged urban basins from structurally uncertain rainfall-runoff models. To this end, we suggest a procedure to explicitly account for input uncertainty and model structure deficits using Bayesian statistics with a continuous-time autoregressive error model. In addition, we propose a concise procedure to derive prior parameter distributions from base data and successfully apply the methodology to an urban catchment in Warsaw, Poland. Based on our results, we are able to demonstrate that the autoregressive error model greatly helps to meet the statistical assumptions and to compute reliable prediction intervals. In our study, we found that predicted peak flows were up to 7 times higher than observations. This was reduced to 5 times with Bayesian updating, using only few discharge measurements. In addition, our analysis suggests that imprecise rainfall information and model structure deficits contribute mostly to the total prediction uncertainty. In the future, flood predictions in ungauged basins will become more important due to ongoing urbanization as well as anthropogenic and climatic changes. Thus, providing reliable measures of uncertainty is crucial to support decision making.
机译:城市化及其带来的土地利用变化极大地影响了流域的水循环和径流过程。不幸的是,受城市蔓延影响最大的小型城市集水区,大多尚未开垦。这使得从本质上难以评估城市化的后果。最重要的是,鉴于应用模型的结构缺陷,目前尚不清楚如何可靠地评估预测不确定性。因此,在这项研究中,我们从结构不确定的降雨径流模型中研究了未设防的城市流域洪水预报的不确定性。为此,我们建议使用贝叶斯统计量和连续时间自回归误差模型来明确说明输入不确定性和模型结构缺陷的过程。此外,我们提出了一种简洁的程序,可以从基础数据中得出先前的参数分布,并将该方法成功地应用于波兰华沙的城市集水区。根据我们的结果,我们能够证明自回归误差模型极大地有助于满足统计假设并计算可靠的预测间隔。在我们的研究中,我们发现预测的峰值流量比观测值高7倍。通过贝叶斯更新,仅使用很少的放电测量就将其减少到5倍。此外,我们的分析表明,不准确的降雨信息和模型结构缺陷主要是造成总预测不确定性的原因。未来,由于持续的城市化进程以及人为和气候变化,未开垦盆地的洪水预报将变得更加重要。因此,提供可靠的不确定性度量对于支持决策至关重要。

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