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首页> 外文期刊>Geomatics,Natural Hazards & Risk >Spatial prediction of flood susceptibility using random-forest and boosted-tree models in Seoul metropolitan city, Korea
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Spatial prediction of flood susceptibility using random-forest and boosted-tree models in Seoul metropolitan city, Korea

机译:韩国首尔市使用随机森林模型和增强树模型的洪水敏感性空间预测

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ABSTRACT Since flood frequency increases with the impact of climate change, the damage that is emphasized on flood-risk maps is based on actual flooded area data; therefore, flood-susceptibility maps for the Seoul metropolitan area, for which random-forest and boosted-tree models are used in a geographic information system (GIS) environment, are created for this study. For the flood-susceptibility mapping, flooded-area, topography, geology, soil and land-use datasets were collected and entered into spatial datasets. From the spatial datasets, 12 factors were calculated and extracted as the input data for the models. The flooded area of 2010 was used to train the model, and the flooded area of 2011 was used for the validation. The importance of the factors of the flood-susceptibility maps was calculated and lastly, the maps were validated. As a result, the distance from the river, geology and digital elevation model showed a high importance among the factors. The random-forest model showed validation accuracies of 78.78% and 79.18% for the regression and classification algorithms, respectively, and boosted-tree model showed validation accuracies of 77.55% and 77.26% for the regression and classification algorithms, respectively. The flood-susceptibility maps provide meaningful information for decision-makers regarding the identification of priority areas for flood-mitigation management.
机译:摘要由于洪水频率随气候变化的影响而增加,因此在洪水风险图上强调的破坏是基于实际的洪水面积数据。因此,为这项研究创建了首尔都会区的洪水敏感性地图,在该地图中,在地理信息系统(GIS)环境中使用了随机森林和增强树模型。对于洪水敏感性制图,收集了洪水区域,地形,地质,土壤和土地利用数据集,并将其输入空间数据集。从空间数据集中,计算并提取了12个因子作为模型的输入数据。使用2010年的洪水区域训练模型,并使用2011年的洪水区域进行验证。计算了洪水敏感性图因素的重要性,最后对这些图进行了验证。结果,到河流的距离,地质和数字高程模型在这些因素中显示出很高的重要性。随机森林模型对回归和分类算法的验证精度分别为78.78%和79.18%,而增强树模型对回归和分类算法的验证精度分别为77.55%和77.26%。洪水敏感性地图为决策者提供了有关确定减轻洪灾管理优先领域的有意义的信息。

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