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首页> 外文期刊>Hydrology and Earth System Sciences >Topological and canonical kriging for design flood prediction in ungauged catchments: An improvement over a traditional regional regression approach?
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Topological and canonical kriging for design flood prediction in ungauged catchments: An improvement over a traditional regional regression approach?

机译:用于未流域的设计洪水预测的拓扑和规范克里格法:相对于传统的区域回归方法有何改进?

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摘要

In the United States, estimation of flood frequency quantiles at ungauged locations has been largely based on regional regression techniques that relate measurable catchment descriptors to flood quantiles. More recently, spatial interpolation techniques of point data have been shown to be effective for predicting streamflow statistics (i.e., flood flows and low-flow indices) in ungauged catchments. Literature reports successful applications of two techniques, canonical kriging, CK (or physiographical-space-based interpolation, PSBI), and topological kriging, TK (or top-kriging). CK performs the spatial interpolation of the streamflow statistic of interest in the two-dimensional space of catchment descriptors. TK predicts the streamflow statistic along river networks taking both the catchment area and nested nature of catchments into account. It is of interest to understand how these spatial interpolation methods compare with generalized least squares (GLS) regression, one of the most common approaches to estimate flood quantiles at ungauged locations. By means of a leave-one-out cross-validation procedure, the performance of CK and TK was compared to GLS regression equations developed for the prediction of 10, 50, 100 and 500 yr floods for 61 streamgauges in the southeast United States. TK substantially outperforms GLS and CK for the study area, particularly for large catchments. The performance of TK over GLS highlights an important distinction between the treatments of spatial correlation when using regression-based or spatial interpolation methods to estimate flood quantiles at ungauged locations. The analysis also shows that coupling TK with CK slightly improves the performance of TK; however, the improvement is marginal when compared to the improvement in performance over GLS.
机译:在美国,对未启用位置的洪水频率分位数的估计主要基于将可测量的流域描述符与洪水分位数相关联的区域回归技术。最近,点数据的空间插值技术已被证明可有效地预测未流失集水区的水流量统计数据(即洪水流量和低流量指数)。文献报道了两种技术的成功应用:规范克里金法CK(或基于自然空间的插值法,PSBI)和拓扑克里金法TK(或顶级克里金法)。 CK在集水区描述符的二维空间中执行感兴趣的流量统计的空间插值。 TK既考虑集水区又考虑集水区的嵌套性质,就可以预测沿河网的流量统计。有趣的是要了解这些空间插值方法与广义最小二乘(GLS)回归的比较,广义最小二乘回归是估计未开挖位置洪水分位数的最常用方法之一。通过留一法交叉验证程序,将CK和TK的性能与为预测美国东南部61个水位计的10年,50年,100年和500年洪水而开发的GLS回归方程进行了比较。在研究区域,特别是对于大流域,传统知识的表现明显优于GLS和CK。当使用基于回归的方法或空间插值方法来估计未开挖位置的洪水分位数时,TK在GLS之上的性能突出表明了空间相关性处理之间的重要区别。分析还表明,将TK与CK耦合可以稍微改善TK的性能;但是,与GLS的性能相比,改进是微不足道的。

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