Linda Bogerd, Hidde Leijnse, Aart Overeem, Remko Uijlenhoet
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The exact contribution of resampling precipitation estimates, required to spatially and temporally align different resolutions when combining or comparing precipitation observations, to the overall uncertainty remains unknown. Here, we analyze the current performance of GPROF over the Netherlands during a 4-year period (2017–2020) while investigating the uncertainty related to sampling. The latter is done by simulating the reference precipitation as satellite footprints that vary in size, geometry, and applied weighting technique. Only GPROF estimates based on observations from the conical-scanning radiometers of the GPM constellation are used. The reference estimates are gauge-adjusted radar precipitation estimates from two ground-based weather radars from the Royal Netherlands Meteorological Institute (KNMI). Echo top heights (ETHs) retrieved from the same radars are used to classify the precipitation as shallow, medium, or deep. 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引用次数: 0
摘要
摘要戈达德剖面算法(GPROF)将全球降水测量(GPM)星座卫星的辐射计观测数据转换为降水估算数据。通常情况下,高质量的地面估测数据可作为评估 GPROF 性能的参考。然而,GPROF 结合了来自不同传感器和信道的观测数据,每个传感器和信道都有不同的足迹。因此,除了将亮度温度转换为降水强度时的不确定性外,还引入了与采样区域代表性相关的不确定性。在合并或比较降水观测数据时,为了在空间和时间上调整不同的分辨率,需要对降水估算数据进行重新采样,而重新采样对总体不确定性的确切影响尚不清楚。在此,我们分析了 GPROF 目前在荷兰 4 年内(2017-2020 年)的性能,同时调查了与采样相关的不确定性。后者是通过将参考降水模拟为卫星足迹来实现的,这些卫星足迹的大小、几何形状和应用的加权技术各不相同。仅使用基于 GPM 星座锥形扫描辐射计观测数据的 GPROF 估计值。参考估算值是荷兰皇家气象研究所(KNMI)的两部地面气象雷达提供的经过测量调整的雷达降水估算值。从同一雷达获取的回波顶高(ETH)用于将降水分为浅层、中层或深层。空间平均方法(高斯加权与算术平均)对降水量估计值的影响很小。足迹大小的影响较大,但无法解释地面和卫星估算之间的所有差异。此外,GPROF 与参考值之间的差异在低 ETH 时最大,而不同足迹大小和加权方法之间的相对偏差随着 ETH 的增加而增加。最后,我们的结果没有显示出沿岸模拟和陆地模拟之间的明显差异。我们的结论是,合并不同信道和传感器所带来的不确定性不能完全解释卫星和地面降水量估算之间的差异。因此,与检索算法和环境条件相关的不确定性比重采样的不确定性更为突出,特别是在浅降水和轻降水方面。
Assessing sampling and retrieval errors of GPROF precipitation estimates over the Netherlands
Abstract. The Goddard Profiling algorithm (GPROF) converts radiometer observations from Global Precipitation Measurement (GPM) constellation satellites into precipitation estimates. Typically, high-quality ground-based estimates serve as reference to evaluate GPROF's performance. To provide a fair comparison, the ground-based estimates are often spatially aligned to GPROF. However, GPROF combines observations from various sensors and channels, each associated with a distinct footprint. Consequently, uncertainties related to the representativeness of the sampled areas are introduced in addition to the uncertainty when converting brightness temperatures into precipitation intensities. The exact contribution of resampling precipitation estimates, required to spatially and temporally align different resolutions when combining or comparing precipitation observations, to the overall uncertainty remains unknown. Here, we analyze the current performance of GPROF over the Netherlands during a 4-year period (2017–2020) while investigating the uncertainty related to sampling. The latter is done by simulating the reference precipitation as satellite footprints that vary in size, geometry, and applied weighting technique. Only GPROF estimates based on observations from the conical-scanning radiometers of the GPM constellation are used. The reference estimates are gauge-adjusted radar precipitation estimates from two ground-based weather radars from the Royal Netherlands Meteorological Institute (KNMI). Echo top heights (ETHs) retrieved from the same radars are used to classify the precipitation as shallow, medium, or deep. Spatial averaging methods (Gaussian weighting vs. arithmetic mean) minimally affect the magnitude of the precipitation estimates. Footprint size has a higher impact but cannot explain all discrepancies between the ground- and satellite-based estimates. Additionally, the discrepancies between GPROF and the reference are largest for low ETHs, while the relative bias between the different footprint sizes and implemented weighting methods increase with increasing ETHs. Lastly, our results do not show a clear difference between coastal and land simulations. We conclude that the uncertainty introduced by merging different channels and sensors cannot fully explain the discrepancies between satellite- and ground-based precipitation estimates. Hence, uncertainties related to the retrieval algorithm and environmental conditions are found to be more prominent than resampling uncertainties, in particular for shallow and light precipitation.
期刊介绍:
Atmospheric Measurement Techniques (AMT) is an international scientific journal dedicated to the publication and discussion of advances in remote sensing, in-situ and laboratory measurement techniques for the constituents and properties of the Earth’s atmosphere.
The main subject areas comprise the development, intercomparison and validation of measurement instruments and techniques of data processing and information retrieval for gases, aerosols, and clouds. The manuscript types considered for peer-reviewed publication are research articles, review articles, and commentaries.