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Mass-Conserving Remapping of Radar Data onto Two-Dimensional Cartesian Coordinates for Hydrologic Applications

机译:用于水文应用的二维数据直角坐标系上的质量守恒的雷达数据重映射

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Recent upgrades to operational radar-rainfall products in terms of quality and resolution call for reexamination of the factors that contribute to the uncertainty of radar-rainfall estimation. Remapping or regridding of radar observations onto Cartesian coordinates is implemented by practitioners when radar estimates are compared against rain gauge observations, in hydrologic applications, or for merging data from different radars. However, assuming perfect radar observations, many of the widely used remapping methodologies do not conserve mass for the rainfall rate field. The most popular remapping approaches used are those based on extracting information from radar bins whose centers fall within a certain distance from the center of the Cartesian grid. This paper develops a mass-conserving method for remapping, which is called precise remapping, which is compared against two other commonly used remapping methods. Results show that the choice of the remapping method can make a substantial difference in grid-averaged rainfall accumulations (up to more than 100%). Differences were quantified using observations from two radars, collected during a field experiment. The interpolation grid resolution was also found to affect interpolated rainfall estimates. Approximate remapping methods tend to be much more sensitive to the interpolation grid resolution than precise remapping. High-resolution radar data such as those from radars with short gate spacing or narrow beams, or the super-resolution Weather Surveillance Radar-1988 Doppler (WSR-88D) sampling format, are significantly more sensitive (by up to 100%) to the remapping method and the interpolation grid resolution than the legacy WSR-88D rainfall data resolution of 1 degrees x 1 km.
机译:就质量和分辨率而言,近期对运行中的雷达降雨产品的升级要求重新检查造成雷达降雨估算不确定性的因素。从业人员在将雷达估算值与雨量计观测值进行比较,在水文应用中或合并来自不同雷达的数据时,可以将雷达观测值重新映射或重新映射到笛卡尔坐标上。但是,假设雷达观测完美,许多广泛使用的重新映射方法就不会节省降雨率场的质量。最受欢迎的重新映射方法是基于从雷达箱中提取信息的方法,这些雷达箱的中心距笛卡尔网格的中心在一定距离内。本文开发了一种用于重映射的质量节省方法,称为精确重映射,将其与其他两种常用重映射方法进行了比较。结果表明,重新映射方法的选择可以使网格平均降雨累积量产生很大的差异(高达100%以上)。使用在野外实验中收集到的来自两个雷达的观测值对差异进行了量化。还发现插值网格分辨率会影响插值降雨估计。近似重映射方法比精确重映射对插值网格分辨率更敏感。高分辨率雷达数据,例如来自具有短门距或窄波束的雷达的数据,或来自超高分辨率的Weather Surveillance Radar-1988 Doppler(WSR-88D)的采样格式,对雷达的敏感度要高得多(最多100%)。重映射方法和插值网格的分辨率比传统的WSR-88D降雨数据分辨率高1度x 1公里。

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