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Generation and Verification of Rainfall Estimates from 10-Yr Volumetric Weather Radar Measurements

机译:从10年体积天气雷达测量结果生成和验证降雨估计

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Volumetric measurements from a C-band weather radar in Belgium are reprocessed over the years 2005-14 to improve the quantitative precipitation estimation (QPE). The data quality is controlled using static clutter and beam blockage maps and clutter identification based on vertical gradients, horizontal texture, and satellite observations. A new QPE is obtained using stratiform-convective classification, a 40-min averaged vertical profile of reflectivity (VPR), a brightband identification, and a specific transformation to rain rates for each precipitation regime. The rain rates are interpolated on a 500-m Cartesian grid, linearly accumulated, and combined with hourly rain gauge measurements using mean field bias or kriging with external drift (KED). The algorithms have been fine-tuned on 13 cases with various meteorological situations. A detailed validation against independent daily rain gauge measurements reveals the importance of VPR correction. A 10-yr verification shows a significant improvement of the new QPE, especially at short and long range, with roughly 50% increase in coverage. Adding the KED allows average improvements of 38%, 35%, and 80% for the mean absolute difference, the multiplicative error spread, and the fraction of good estimates, respectively. The benefit is higher in widespread situations and increases when considering higher rainfall amounts. The mitigation of radar artifacts is clearly visible on 10-yr statistics, including mean annual totals, probabilities to exceed 10 mm, and maxima for hourly and daily accumulation. The correlation of mean totals with rain gauges increases from 0.54 to 0.66 with the new QPE and to 0.8 adding KED.
机译:在2005-14年间,对比利时C波段天气雷达的体积测量结果进行了重新处理,以改善定量降水估计(QPE)。使用静态杂波和波束障碍图以及基于垂直梯度,水平纹理和卫星观测的杂波识别来控制数据质量。使用层状对流分类,40分钟的平均垂直垂直反射率(VPR),亮带识别以及针对每种降水方式的特定降雨率转换,可以获得新的QPE。降雨率插值在500 m的笛卡尔网格上,进行线性累加,并与使用平均场偏差或带有外部漂移的Kriging(KED)的每小时雨量计测量结合。该算法已针对13种具有各种气象情况的案例进行了微调。针对独立的日常雨量计测量进行的详细验证揭示了VPR校正的重要性。十年的验证显示,新的QPE有了显着改善,尤其是在短期和长期范围内,覆盖率大约增加了50%。添加KED可使平均绝对差,乘性误差分布和良好估计的分数分别平均提高38%,35%和80%。在广泛的情况下,收益更高,而考虑到更高的降雨量,收益会增加。雷达伪影的减轻在10年的统计数据中清晰可见,包括年均总数,超过10毫米的概率以及每小时和每天累积的最大值。新的QPE将平均总量与雨量计的相关性从0.54增加到0.66,添加KED则增加到0.8。

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