首页> 外文期刊>Journal of Remote Sensing & GIS >Hypothetically Quantifying Flood Vulnerability in a Reservoir Tributary Employing 3-Dimensional Geomorphological Terrain Related Covariants, a Stochastic Iterative Quantitative Interpolator and a Space-time Global Circulation Model Paradigm
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Hypothetically Quantifying Flood Vulnerability in a Reservoir Tributary Employing 3-Dimensional Geomorphological Terrain Related Covariants, a Stochastic Iterative Quantitative Interpolator and a Space-time Global Circulation Model Paradigm

机译:假设量化利用3维地貌地形相关协变量,随机迭代定量内插器和时空全球环流模型范式的水库支流中的洪水脆弱性

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Deaths from flooding in the United States are preventable with the right planning maps and mitigation. This research is revolutionary as it forecast the most vulnerable flooding areas of higher population regions by incorporating future precipitation projections, soil classifications, a 3-dimensional (3-D) digital elevation model (DEM) and the Geographic Information System (GIS) kriging algorithmic iterative interpolation tool to determine the optimal geolocations where storm water drainage detention or retention and improvements should occur. Firstly, utilizing spatial tools and a global circulation models (GCMs), precipitation was mapped to determine high vulnerability areas for future potential flooding. A robust semi variogram, geospatial explanatory locations of precipitation were then parsimoniously constructed for a sample site in Hillsborough County, Florida. Overlaying this data on 3-D temporal geomorphological terrain related elevation models, high risk flooding areas were geolocated employing geospectrotemporal geospatial techniques. For this region, two-thirds of the precipitation occurs during the summer months; therefore, June, July and August were analyzed. Furthermore, just focusing on one month, e.g., August, would not take into account antecedent ecogeohydrology conditions which impact run off volume and flooding. Soil characteristics such as capillary action, permeability and drainage porosity were considered as some soils have a high water-holding saturation capacity and poor infiltration capability, increasing flooding. Finally, extracting forecasted slope coefficient from 3-D models were examined to determine if they were feasible to help extract geolocations where there is prevalent standing water during wet season.
机译:正确的规划图和缓解措施可以预防美国洪水造成的死亡。这项研究具有革命性,因为它结合了未来的降水预测,土壤分类,3维(3-D)数字高程模型(DEM)和地理信息系统(GIS)克里金法,从而预测了较高人口区域最脆弱的洪水地区迭代插值工具,以确定应保留或改善雨水排水系统的最佳地理位置。首先,利用空间工具和全球环流模型(GCM),对降水进行了测绘,以确定高脆弱性区域,以便将来可能发生洪灾。然后,为佛罗里达州希尔斯伯勒县的一个采样点简约地构造了鲁棒的半变异函数,地理空间解释的降水位置。将这些数据叠加在与3D时间地貌地形相关的高程模型上,使用地理时空地理空间技术对高风险洪水区域进行了地理定位。在该地区,三分之二的降雨发生在夏季。因此,分析了六月,七月和八月。此外,仅关注一个月,例如八月,就不会考虑影响径流和洪水的前期生态水文条件。认为土壤特征如毛细作用,渗透性和排水孔隙度是因为一些土壤具有高持水饱和能力和较差的渗透能力,从而增加了洪水泛滥。最后,检查了从3-D模型中提取预测的坡度系数,以确定它们是否可行,以帮助提取在雨季中存在大量死水的地理位置。

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