利用概率建模绘制河流迁移地貌风险图--一个框架

IF 2.8 2区 地球科学 Q2 GEOGRAPHY, PHYSICAL
Brayden Noh, Omar Wani, Kieran B. J. Dunne, Michael P. Lamb
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引用次数: 0

摘要

摘要蜿蜒河流的侧向迁移对冲积洪泛区的人类住区、道路和基础设施构成侵蚀风险。虽然有大量科学文献介绍了驱动河流迁移的主要机制,但仍无法准确预测河流蜿蜒多年的演变情况。部分原因是我们并不完全了解每种机制的相对作用,而且确定性数学模型也不具备考虑系统随机性的能力。此外,模型结构缺陷和未知参数值导致的不确定性依然存在。因此,为了更可靠地评估风险,我们需要概率预测。在此,我们介绍一种利用概率建模生成河流迁移地貌风险图的工作流程。我们从一个简单的河流迁徙几何模型入手,在该模型中,名义迁徙率会随着局部和上游曲率的增加而增加。然后,我们使用平滑的随机函数对模型结构的缺陷进行解释。利用从卫星数据中推断出的模型参数值分布,通过蒙特卡罗运行生成河道位置随时间变化的概率预测。我们提供了在贝叶斯框架内进行参数推断的方法。我们证明,在评估河流迁徙造成的侵蚀危害时,这种风险图在避免假阴性方面具有相对更高的信息量,而假阴性可能既有害又代价高昂。我们的研究结果表明,随着预测时间跨度的延长,整个河道带侵蚀危害的空间不确定性也会增加--更多的地理区域属于 25 % < 概率 < 75 % 的范围。不过,对于紧邻河道的区域,尤其是河道切岸一侧的侵蚀情况,预测结果也更有把握。因此,概率模型可以量化我们对河流迁徙预测的置信度,而这种置信度在空间和时间上都是可变的。我们还注意到,为了提高这些风险地图的可靠性,我们需要在模型中对一阶动态进行合理精确的描述,而简单的几何模型并不总是具备这种精确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geomorphic risk maps for river migration using probabilistic modeling – a framework
Abstract. Lateral migration of meandering rivers poses erosional risks to human settlements, roads, and infrastructure in alluvial floodplains. While there is a large body of scientific literature on the dominant mechanisms driving river migration, it is still not possible to accurately predict river meander evolution over multiple years. This is in part because we do not fully understand the relative contribution of each mechanism and because deterministic mathematical models are not equipped to account for stochasticity in the system. Besides, uncertainty due to model structure deficits and unknown parameter values remains. For a more reliable assessment of risks, we therefore need probabilistic forecasts. Here, we present a workflow to generate geomorphic risk maps for river migration using probabilistic modeling. We start with a simple geometric model for river migration, where nominal migration rates increase with local and upstream curvature. We then account for model structure deficits using smooth random functions. Probabilistic forecasts for river channel position over time are generated by Monte Carlo runs using a distribution of model parameter values inferred from satellite data. We provide a recipe for parameter inference within the Bayesian framework. We demonstrate that such risk maps are relatively more informative in avoiding false negatives, which can be both detrimental and costly, in the context of assessing erosional hazards due to river migration. Our results show that with longer prediction time horizons, the spatial uncertainty of erosional hazard within the entire channel belt increases – with more geographical area falling within 25 % < probability < 75 %. However, forecasts also become more confident about erosion for regions immediately in the vicinity of the river, especially on its cut-bank side. Probabilistic modeling thus allows us to quantify our degree of confidence – which is spatially and temporally variable – in river migration forecasts. We also note that to increase the reliability of these risk maps, we need to describe the first-order dynamics in our model to a reasonable degree of accuracy, and simple geometric models do not always possess such accuracy.
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来源期刊
Earth Surface Dynamics
Earth Surface Dynamics GEOGRAPHY, PHYSICALGEOSCIENCES, MULTIDISCI-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
5.40
自引率
5.90%
发文量
56
审稿时长
20 weeks
期刊介绍: Earth Surface Dynamics (ESurf) is an international scientific journal dedicated to the publication and discussion of high-quality research on the physical, chemical, and biological processes shaping Earth''s surface and their interactions on all scales.
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