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A method for filtering out raingauge representativeness errors from the verification distributions of radar and raingauge rainfall

机译:一种从雷达和雨量计雨量验证分布中滤除雨量计代表性误差的方法

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摘要

The study presents a conditional distribution transformation (CDT) method for improving radar rainfall (RR) verifications that use sparse raingauge networks as the ground reference (GR). Large differences between the sampling areas of radar and raingauge measurements render direct comparisons problematic. The purpose of the CDT method is to filter out the raingauge representative-ness errors from radar-raingauge verification samples. Our objective is to test the validity and evaluate the accuracy of this method, These analyses are based on two large data samples from high-density research networks covering the Goodwin Creek watershed in Mississippi and the Little Washita watershed in Oklahoma. An example implementation in a quasi operational situation is also presented, and sample size requirements are investigated using Monte Carlo simulations. Our tests indicate that the CDT method performs with satisfactory accuracy and can considerably improve on the currently applied RR verification practices.
机译:这项研究提出了一种条件分布变换(CDT)方法,用于改进雷达稀疏度(RR)验证,该方法使用稀疏雨量计网络作为地面参考(GR)。雷达和雨量计测量的采样区域之间的巨大差异使得直接比较存在问题。 CDT方法的目的是从雷达雨量计验证样本中滤除雨量计代表度误差。我们的目标是测试该方法的有效性和准确性。这些分析是基于来自高密度研究网络的两个大型数据样本,这些数据覆盖了密西西比州的Goodwin Creek流域和俄克拉荷马州的Little Washita流域。还介绍了在准操作情况下的示例实现,并使用蒙特卡洛模拟研究了样本量要求。我们的测试表明,CDT方法具有令人满意的准确性,并且可以大大改善当前应用的RR验证实践。

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