首页> 外文期刊>Journal of Applied Meteorology and Climatology >Estimation of Ground-Level Reflectivity Factor in Operational Weather Radar Networks Using VPR-Based Correction Ensembles
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Estimation of Ground-Level Reflectivity Factor in Operational Weather Radar Networks Using VPR-Based Correction Ensembles

机译:使用基于VPR的校正集合估算运行天气雷达网络中的地面反射率因子

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An operational method is presented that corrects the bias of radar-based quantitative precipitation estimations (QPE) in radar networks that is due to the vertical profile of reflectivity (VPR) factor. It is used in both rain and snowfall. Measured average VPRs are obtained from the volume scans of each radar at ranges of 2–40 km. At each radar, two time ensembles of the bias estimates are made use of: the first ensemble contains0–24 members at each range gate, calculated by beam convolution from the measured VPRs at 15-min intervals during the most recent 6 h. The second ensemble similarly contains 24 members calculated from parameterized climatological VPRs. In each scan theprecipitation type classification and the climatological VPR are matched with the freezing level obtained from a numerical weather prediction model. The members of the two ensembles are weighted for both time lapse and quality and are then combined. At each composite grid point, the value of the networked VPR correction is then determined as a distance-weighted mean of the time ensembles of biases from all radars located closer than 300 km. In the absence of calibration errors, the resulting estimate ofthe reflectivity factor at ground level Ze is a seamless continuous field. As verified by radar–radar and radar–gauge comparisons in the finnish network of eight C-band Doppler radars, the method efficiently reduces the range-dependent bias in QPE. For example, at radar ranges of 141–219 km, the average bias in the ground level Ze was 28.7 and 1.2 dB before and after the VPR correction, respectively.
机译:提出了一种可纠正由于反射率(VPR)因子的垂直剖面而引起的雷达网络中基于雷达的定量降水估计(QPE)偏差的操作方法。它既可用于降雨,也可用于降雪。从每个雷达在2–40 km范围内的体积扫描获得测得的平均VPR。在每个雷达上,利用两个时间偏差估计集合:第一个集合在每个测距门包含0-24个成员,这是通过在最近6 h内以15分钟的间隔从测得的VPR进行光束卷积计算得出的。第二组类似地包含根据参数化气候VPR计算的24个成员。在每次扫描中,降水类型分类和气候VPR与从数值天气预报模型获得的冻结水平相匹配。对两个合奏的成员进行时间和质量加权,然后合并。然后,在每个复合网格点处,将网络VPR校正的值确定为来自距离300 km以下的所有雷达的偏差的时间集合的距离加权平均值。在没有校准误差的情况下,在地面水平Ze处反射系数的最终估计是无缝连续场。正如在八个C波段多普勒雷达的芬兰网络中通过雷达-雷达和雷达-仪表的比较所验证的那样,该方法有效地降低了QPE中与距离有关的偏差。例如,在141-219 km的雷达范围内,在VPR校正之前和之后,地平面Ze的平均偏差分别为28.7和1.2 dB。

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