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An improved method to represent DEM uncertainty in glacial lake outburst flood propagation using stochastic simulations

机译:用随机模拟表示冰川湖突出洪水传播中DEm不确定性的改进方法

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摘要

Modelling glacial lake outburst floods (GLOFs) or ‘jökulhlaups’, necessarily involves the propagation of large and often stochastic uncertainties throughout the source to impact process chain. Since flood routing is primarily a function of underlying topography, communication of digital elevation model (DEM) uncertainty should accompany such modelling efforts. Here, a new stochastic first-pass assessment technique was evaluated against an existing GIS-based model and an existing 1D hydrodynamic model, using three DEMs with different spatial resolution. The analysis revealed the effect of DEM uncertainty and model choice on several flood parameters and on the prediction of socio-economic impacts. Our new model, which we call MC-LCP (Monte Carlo Least Cost Path) and which is distributed in the supplementary information, demonstrated enhanced ‘stability’ when compared to the two existing methods, and this ‘stability’ was independent of DEM choice. The MC-LCP model outputs an uncertainty continuum within its extent, from which relative socio-economic risk can be evaluated. In a comparison of all DEM and model combinations, the Shuttle Radar Topography Mission (SRTM) DEM exhibited fewer artefacts compared to those with the Advanced Spaceborne Thermal Emission and Reflection Radiometer Global Digital Elevation Model (ASTER GDEM), and were comparable to those with a finer resolution Advanced Land Observing Satellite Panchromatic Remote-sensing Instrument for Stereo Mapping (ALOS PRISM) derived DEM. Overall, we contend that the variability we find between flood routing model results suggests that consideration of DEM uncertainty and pre-processing methods is important when assessing flow routing and when evaluating potential socio-economic implications of a GLOF event. Incorporation of a stochastic variable provides an illustration of uncertainty that is important when modelling and communicating assessments of an inherently complex process.
机译:对冰川湖爆发洪水(GLOF)或“jökulhlaups”进行建模,必然涉及到整个源头中传播的大型不确定性因素(通常是随机性因素)的传播,从而影响工艺链。由于洪水路由主要是基础地形的功能,因此数字高程模型(DEM)不确定性的传达应伴随此类建模工作。在这里,使用三个具有不同空间分辨率的DEM,针对现有的基于GIS的模型和现有的一维水动力模型,评估了一种新的随机首过评估技术。分析揭示了DEM不确定性和模型选择对几个洪水参数以及对社会经济影响的预测的影响。我们的新模型(称为MC-LCP(蒙特卡洛最小成本路径),分布在补充信息中)与两种现有方法相比,具有增强的“稳定性”,并且这种“稳定性”与DEM选择无关。 MC-LCP模型在其范围内输出不确定性连续体,从中可以评估相对的社会经济风险。在所有DEM和模型组合的比较中,与高级星载热发射和反射辐射计全球数字高程模型(ASTER GDEM)相比,航天飞机雷达地形任务(SRTM)DEM展示的伪像更少,并且与具有分辨率更高的立体测绘高级陆地观测卫星全色遥感仪器(ALOS PRISM)衍生的DEM。总体而言,我们认为洪水路线模型结果之间存在差异,这表明在评估流量路线和评估GLOF事件的潜在社会经济影响时,考虑DEM不确定性和预处理方法很重要。随机变量的合并提供了不确定性的说明,当对固有复杂过程的评估进行建模和交流时,不确定性非常重要。

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