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A data-driven analysis, and its limitations, of the spatial flood archive of Flanders, Belgium to assess the impact of soil sealing on flood volume and extent

机译:比利时的佛兰德斯空间洪水存档的数据驱动分析及其限制,以评估土壤密封对洪水数量和程度的影响

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Soil sealing increases surface runoff in a watershed and decreases infiltration into the soil. Consequently, urbanization poses a significant challenge for watershed management to mitigate faster runoff accumulation downstream and associated floods. Hydrological models are often employed to assess the impact of land-use dynamics on flood events. Alternatively, data-driven approaches combining time series of land use geodatasets and georeferenced flooded zones also allow to assess the relationship between soil sealing and flood severity. This study presents such data-driven analysis using a spatially explicit archive of flooded areas dating back to 1988 in the Flanders region of Belgium, which is characterized by urban sprawl. This archived data, along with time series of rainfall and land use, were analyzed for three middle-sized river subbasins using two machine learning methods: boosted regression trees and support vector regression. The machine learning methods were found suitable for this type of analysis, since their flexibility allows for spatially explicit models with larger sample sizes. However, the relationship between soil sealing and flood volume and extent could not be conclusively confirmed by our models. This may be due to data limitations, such as the limited number of recorded historical floods, inaccuracies in recorded historical flood polygons and inconsistencies in the land use classifications. It is therefore stressed that continued consistent monitoring of floods and land use changes is required.
机译:土壤密封增加了流域的表面径流,并将渗透降至土壤中。因此,城市化对流域管理构成了重大挑战,以减少更快的径流累积下游和相关洪水。水文模型通常用于评估土地利用动力学对洪水事件的影响。或者,数据驱动的方法组合时间序列的土地使用地理数据和地理淹没的洪水区也允许评估土壤密封和洪水严重程度之间的关系。本研究提出了使用返回基因斯弗兰迪斯地区的空间明确的地区的空间明确档案,其特点是城市蔓延的特征。使用两种机器学习方法,分析了这一存档的数据以及降雨量和土地使用的时间系列,以及三个中型河划分物:提升回归树和支持向量回归。发现机器学习方法适用于这种类型的分析,因为它们的灵活性允许具有较大样本尺寸的空间显式模型。然而,我们的模型无法得知土壤密封和洪水卷之间的关系。这可能是由于数据限制,例如记录的历史洪水数量有限,记录的历史洪水多边形的不准确以及土地使用分类的不一致。因此,强调,需要持续一致的洪水和土地利用变化的监测。

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