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首页> 外文期刊>ournal of the Meteorological Society of Japan >A Bayesian Correction Approach for Improving Dual-frequency Precipitation Radar Rainfall Rate Estimates
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A Bayesian Correction Approach for Improving Dual-frequency Precipitation Radar Rainfall Rate Estimates

机译:一种改进双频降水雷达降雨率估算的贝叶斯校正方法

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The accurate estimation of precipitation is an important objective for the Dual-frequency Precipitation Radar (DPR), which is located on board the Global Precipitation Measurement (GPM) satellite core observatory. In this study, a Bayesian correction (BC) approach is proposed to improve the DPR's instantaneous rainfall rate product. Ground dual-polarization radar (GR) observations are used as references, and a log-transformed Gaussian distribution is assumed as the instantaneous rainfall process. Additionally, a generalized regression model is adopted in the BC algorithm. Rainfall intensities such as light, moderate, and heavy rain and their variable influences on the model's performance are considered. The BC approach quantifies the predictive uncertainties associated with the Bayesian-corrected DPR (DPR_BC) rainfall rate estimates. To demonstrate the concepts developed in this study, data from the GPM overpasses of the Weather Service Surveillance Radar (WSR-88D), KHGX, in Houston, Texas, between April 2014 and June 2018 are used. Observation errors in the DPR instantaneous rainfall rate estimates are analyzed as a function of rainfall intensity. Moreover, the best-performing BC model is implemented in three GPM-overpass cases with heavy rainfall records across the southeastern United States. The results show that the DPR_BC rainfall rate estimates have superior skill scores and are in better agreement with the GR references than with the DPR estimates. This study demonstrates the potential of the proposed BC algorithm for enhancing the instantaneous rainfall rate product from spaceborne radar equipment.
机译:降水的准确估计是双频降水雷达(DPR)的重要目标,该雷达(DPR)位于全局降水测量(GPM)卫星核心天文台上。在这项研究中,提出了一种贝叶斯矫正(BC)方法来改善DPR的瞬时降雨率产品。地面双极化雷达(GR)观察用作参考文献,并且假定对数转换的高斯分布作为瞬时降雨过程。另外,在BC算法中采用了广义回归模型。考虑降雨强度,如光,中等和大雨及其对模型性能的影响。 BC方法量化了与贝叶斯纠正的DPR(DPR_BC)降雨率估算相关的预测不确定性。为了展示本研究中开发的概念,使用来自2014年4月和2018年6月休斯顿,德克萨斯州的天气服务监测雷达(WSR-88D),KHGX的GPM立交网的数据。 DPR瞬时降雨率估算中的观察误差被分析为降雨强度的函数。此外,最佳的BC模型是在三个GPM-立交桥案例中实施,跨美国东南部的大雨记录。结果表明,DPR_BC降雨率估算具有优异的技能评分,并且与GR参考资料更好,而不是与DPR估计值。本研究表明,提出了BC算法的潜力,用于增强星载雷达设备的瞬时降雨率产品。

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