利用随机森林模型将荷兰上空的微波辐射计观测数据分为干降水、浅降水和非浅降水三类

L. Bogerd, Chris Kidd, Christian Kummerow, H. Leijnse, A. Overeem, V. Petković, K. Whan, R. Uijlenhoet
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引用次数: 0

摘要

空间微波辐射计是全球降水测量(GPM)任务的一个重要组成部分,因为它们经常对降雨系统进行采样。微波辐射计测量微波辐射(亮度温度,Tb),在适当的假设条件下可将其转换为降水量估计值。然而,利用星载辐射计探测浅层降水系统具有挑战性,尤其是在陆地上空,因为它们的微弱信号很难与与干燥条件相关的信号区分开来。本研究使用随机森林模型(RF)将荷兰上空的微波辐射计观测数据分为干燥、浅层或非浅层降水--该地区地表条件多变,经常出现浅层降水。该 RF 在五年数据(2016-2020 年)的基础上进行了训练,并在两个独立年份(2015 年、2021 年)进行了测试。观测数据通过地面气象雷达回波顶高进行分类。对各种 RF 模型进行了评估,例如仅使用 GPM 的微波成像仪 (GMI) Tb 值作为输入特征,或包括空间对齐的 ERA-5 2 米温度和冰冻度再分析和/或双降水雷达 (DPR) 观测数据。与输入特征无关,该模式在夏季表现最佳,在冬季表现最差。该模型将 Tb 值较低的高频信道(≥85 GHz)观测数据归类为非浅层,将 Tb 值较高的观测数据归类为干层,将介于两者之间的观测数据归类为浅层。被错误分类的足迹表现出与其指定类别相对应的辐射特征。案例研究显示,被误划为浅层的干燥观测数据与较低的氚值有关,这可能是由于非沉淀云中存在冰颗粒造成的。被误判为干燥的浅层足迹可能与没有冰颗粒有关。
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Classifying microwave radiometer observations over The Netherlands into dry, shallow-, and non-shallow precipitation using a random forest model
Spaceborne microwave radiometers represent an important component of the Global Precipitation Measurement (GPM) mission due to their frequent sampling of rain systems. Microwave radiometers measure microwave radiation (brightness temperatures, Tb), which can be converted into precipitation estimates with appropriate assumptions. However, detecting shallow precipitation systems using space-borne radiometers is challenging, especially over land, as their weak signals are hard to differentiate from those associated with dry conditions. This study uses a random forest model (RF) to classify microwave radiometer observations as dry, shallow, or non-shallow over the Netherlands - a region with varying surface conditions and frequent occurrence of shallow precipitation. The RF is trained on five years of data (2016-2020) and tested with two independent years (2015, 2021). The observations are classified using ground-based weather radar echo top heights. Various RF models are assessed, such as using only GPM’s Microwave Imager (GMI) Tb values as input features or including spatially aligned ERA-5 2-meter temperature and freezing level reanalysis and/or Dual Precipitation Radar (DPR) observations. Independent of the input features, the model performs best in summer and worst in winter. The model classifies observations from high-frequency channels (≥85 GHz) with lower Tb-values as non-shallow, higher values as dry, and those in between as shallow. Misclassified footprints exhibit radiometric characteristics corresponding to their assigned class. Case studies reveal dry observations misclassified as shallow are associated with lower Tb-values, likely resulting from the presence of ice particles in non-precipitating clouds. Shallow footprints misclassified as dry are likely related to the absence of ice particles.
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