首页> 外文OA文献 >Assessment of Rainfall Estimates Using a Standard Z-R Relationship and the Probability Matching Method Applied to Composite Radar Data in Central Florida
【2h】

Assessment of Rainfall Estimates Using a Standard Z-R Relationship and the Probability Matching Method Applied to Composite Radar Data in Central Florida

机译:使用标准Z-R关系和概率匹配方法对佛罗里达州中部复合雷达数据的降雨量估算进行评估

摘要

Precipitation estimates from radar systems are a crucial component of many hydrometeorological applications, from flash flood forecasting to regional water budget studies. For analyses on large spatial scales and long timescales, it is frequently necessary to use composite reflectivities from a network of radar systems. Such composite products are useful for regional or national studies, but introduce a set of difficulties not encountered when using single radars. For instance, each contributing radar has its own calibration and scanning characteristics, but radar identification may not be retained in the compositing procedure. As a result, range effects on signal return cannot be taken into account. This paper assesses the accuracy with which composite radar imagery can be used to estimate precipitation in the convective environment of Florida during the summer of 1991. Results using Z = 30OR(sup 1.4) (WSR-88D default Z-R relationship) are compared with those obtained using the probability matching method (PMM). Rainfall derived from the power law Z-R was found to he highly biased (+90%-l10%) compared to rain gauge measurements for various temporal and spatial integrations. Application of a 36.5-dBZ reflectivity threshold (determined via the PMM) was found to improve the performance of the power law Z-R, reducing the biases substantially to 20%-33%. Correlations between precipitation estimates obtained with either Z-R relationship and mean gauge values are much higher for areal averages than for point locations. Precipitation estimates from the PMM are an improvement over those obtained using the power law in that biases and root-mean-square errors are much lower. The minimum timescale for application of the PMM with the composite radar dataset was found to be several days for area-average precipitation. The minimum spatial scale is harder to quantify, although it is concluded that it is less than 350 sq km. Implications relevant to the WSR-88D system are discussed.
机译:从山洪预报到区域水预算研究,雷达系统的降水估计是许多水文气象应用的重要组成部分。对于大空间尺度和长时间尺度的分析,通常需要使用雷达系统网络的复合反射率。这种复合产品可用于区域或国家研究,但会带来一系列使用单个雷达时未遇到的困难。例如,每个贡献雷达具有自己的校准和扫描特性,但是在合成过程中可能不会保留雷达标识。结果,不能考虑范围对信号返回的影响。本文评估了使用复合雷达图像估算1991年夏季佛罗里达对流环境中降水的准确性。将使用Z = 30OR(sup 1.4)(WSR-88D默认ZR关系)得到的结果与获得的结果进行比较使用概率匹配方法(PMM)。与针对各种时间和空间积分的雨量计测量相比,发现从幂定律Z-R得出的降雨具有较高的偏差(+ 90%-110%)。发现应用36.5 dBZ反射率阈值(通过PMM确定)可以改善功率定律Z-R的性能,从而将偏置大幅降低至20%-33%。用Z-R关系获得的降水量估计值与平均​​值测量值之间的相关性,对于面积平均值而言要比对点位置更高。 PMM的降水估计相对于使用幂定律获得的降水有所改进,因为偏差和均方根误差要低得多。发现将PMM与复合雷达数据集一起应用的最短时间尺度是面积平均降水的几天。尽管得出的最小空间规模小于350平方公里,但更难以量化。讨论了与WSR-88D系统有关的含义。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号