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The Use of Similarity Concepts to Represent Subgrid Variability in Land Surface Models: Case Study in a Snowmelt-Dominated Watershed

机译:相似性概念在陆地表面模型中代表亚电网变异性的研究:以融雪为主的流域中的案例研究

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This paper develops a multivariate mosaic subgrid approach to represent subgrid variability in land surface models (LSMs). The k-means clustering is used to take an arbitrary number of input descriptors and objectively determine areas of similarity within a catchment or mesoscale model grid box. Two different classifications of hydrologic similarity are compared: an a priori classification, where clusters are based solely on known physiographic information, and an a posteriori classification, where clusters are defined based on high-resolution LSM simulations. Simulations from these clustering approaches are compared to high-resolution gridded simulations, as well as to three common mosaic approaches used in LSMs: the "lumped" approach (no subgrid variability), disaggregation by elevation bands, and disaggregation by vegetation types in two subcatchments. All watershed disaggregation methods are incorporated in the Noah Multi-Physics (Noah-MP) LSM and applied to snowmelt-dominated subcatchments within the Reynolds Creek watershed in Idaho. Results demonstrate that the a priori clustering method is able to capture the aggregate impact of finescale spatial variability with 0(10) simulation points, which is practical for implementation into an LSM scheme for coupled predictions on continental global scales. The multivariate a priori approach better represents snow cover and depth variability than the univariate mosaic approaches, critical in snowmelt-dominated areas. Catchment-averaged energy fluxes are generally within 10%-15% for the high-resolution and a priori simulations, while displaying more subgrid variability than the univariate mosaic methods. Examination of observed and simulated streamflow time series shows that the a priori method generally reproduces hydrograph characteristics better than the simple disaggregation approaches.
机译:本文开发了一种多元镶嵌子网格方法来表示土地表面模型(LSMs)中的子网格可变性。 k均值聚类用于获取任意数量的输入描述符,并客观地确定集水区或中尺度模型网格框中的相似区域。比较了两种不同的水文相似性分类:先验分类,其中聚类仅基于已知的生理信息;后验分类,其中聚类是基于高分辨率LSM模拟定义的。将这些聚类方法的模拟与高分辨率网格模拟以及LSM中使用的三种常见镶嵌方法进行了比较:“集总”方法(无子网格可变性),两个海拔高度的分解以及两个子集水区中按植被类型的分解。所有流域分解方法均已纳入Noah Multi-Physics(Noah-MP)LSM中,并应用于爱达荷州雷诺兹克里克流域内以融雪为主的子汇水区。结果表明,先验聚类方法能够捕获具有0(10)个模拟点的精细尺度空间变异性的总体影响,这对于将LSM方案实施为对大陆全球尺度的耦合预测是可行的。与单变量镶嵌方法相比,多元先验方法更好地表示了积雪和深度变化,这在融雪为主的地区至关重要。对于高分辨率和先验模拟,流域平均能量通量通常在10%-15%以内,同时比单变量镶嵌方法显示出更大的子网格可变性。对观察到的和模拟的水流时间序列的检验表明,先验方法通常比简单的分解方法更好地再现水文特征。

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