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Spatial interpolation schemes of daily precipitation for hydrologic modeling

机译:水文模拟日降水量的空间插值方案

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摘要

Distributed hydrologic models typically require spatial estimates of precipitation interpolated from sparsely located observational points to the specific grid points. We compare and contrast the performance of regression-based statistical methods for the spatial estimation of precipitation in two hydrologically different basins and confirmed that widely used regression-based estimation schemes fail to describe the realistic spatial variability of daily precipitation field. The methods assessed are: (1) inverse distance weighted average; (2) multiple linear regression (MLR); (3) climatological MLR; and (4) locally weighted polynomial regression (LWP). In order to improve the performance of the interpolations, the authors propose a two-step regression technique for effective daily precipitation estimation. In this simple two-step estimation process, precipitation occurrence is first generated via a logistic regression model before estimate the amount of precipitation separately on wet days. This process generated the precipitation occurrence, amount, and spatial correlation effectively. A distributed hydrologic model (PRMS) was used for the impact analysis in daily time step simulation. Multiple simulations suggested noticeable differences between the input alternatives generated by three different interpolation schemes. Differences are shown in overall simulation error against the observations, degree of explained variability, and seasonal volumes. Simulated streamflows also showed different characteristics in mean, maximum, minimum, and peak flows. Given the same parameter optimization technique, LWP input showed least streamflow error in Alapaha basin and CMLR input showed least error (still very close to LWP) in Animas basin. All of the two-step interpolation inputs resulted in lower streamflow error compared to the directly interpolated inputs.
机译:分布式水文模型通常需要从稀疏的观测点到特定网格点插值的降水的空间估计。我们比较和对比了基于回归的统计方法在两个水文不同流域的降水空间估算的性能,并证实了广泛使用的基于回归的估算方案无法描述日降水场的现实空间变异性。评估的方法为:(1)距离反比加权平均; (2)多元线性回归(MLR); (3)气候MLR; (4)局部加权多项式回归(LWP)。为了提高插值的性能,作者提出了一种两步回归技术来进行有效的每日降水估算。在此简单的两步估算过程中,首先通过logistic回归模型生成降水发生,然后在湿日分别估算降水量。这个过程有效地产生了降水的发生,数量和空间相关性。在每日时间步长仿真中,使用分布式水文模型(PRMS)进行影响分析。多种模拟表明,由三种不同的插值方案生成的输入替代方案之间存在明显差异。总体模拟误差与观测值,解释的变化程度和季节性量之间存在差异。模拟的流量在平均流量,最大流量,最小流量和峰值流量方面也显示出不同的特性。使用相同的参数优化技术,阿拉帕哈盆地的LWP输入显示出最小的流量误差,而阿尼马斯盆地的CMLR输入显示出最小的误差(仍然非常接近LWP)。与直接内插输入相比,所有两步内插输入均导致较低的流误差。

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