基于ERA5再分析数据和TRMM PR和VIRS测量数据的云、降水和大气参数分析新数据集

Lilu Sun, Yunfei Fu
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引用次数: 3

摘要

摘要云和降水在全球水文循环和大气-地球系统的辐射收支中起着至关重要的作用,并且与区域和全球气候密切相关。云和降水系统内部大气状态的变化也很重要,但多源数据集的时空分辨率不同,阻碍了多源数据集的使用。我们将热带降雨测量任务(TRMM)降水雷达(PR)测量的降水参数与ERA5再分析数据集中可见光和红外扫描仪(VIRS)测量的多通道云顶辐射和大气参数进行合并。结果表明,降水参数与多通道云顶辐亮度之间的像元合并是合理的。像素合并数据的1B01-2A25数据集(1B01-2A25- pmd)包含每个PR像素的云参数。将1B01-2A25网格数据集(1B01-2A25- gd)与ERA5再分析数据进行空间合并。统计结果表明,网格化对1B01-2A25-PMD的参数没有不可接受的影响。在同一轨道上,近地表雨率与VIRS观测信号的平均值差值不大于0.87,标准差不大于2.38。将1B01-2A25- gd与ERA5数据集进行时空并置,建立合并后的1B01-2A25网格数据集(M-1B01-2A25-GD)。通过对3个典型云和降水事件的分析,说明了M-1B01-2A25-GD的实际应用。这种新的合并网格数据集可用于云和降水系统的研究,并为多源数据分析和模式模拟提供了完美的机会。本文使用的数据可在http://doi.org/10.5281/zenodo.4458868免费获得(Sun and Fu,2021)。
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A new merged dataset for analyzing clouds, precipitation and atmospheric parameters based on ERA5 reanalysis data and the measurements of TRMM PR and VIRS
Abstract. Clouds and precipitation have vital roles in the global hydrological cycle and the radiation budget of the atmosphere–Earth system and are closely related to both the regional and global climate. Changes in the status of the atmosphere inside clouds and precipitation systems are also important, but the use of multi-source datasets is hampered by their different spatial and temporal resolutions. We merged the precipitation parameters measured by the Tropical Rainfall Measuring Mission (TRMM) Precipitation Radar (PR) with the multi-channel cloud-top radiance measured by the Visible and Infrared Scanner (VIRS) and atmospheric parameters in the ERA5 reanalysis dataset. The merging of pixels between the precipitation parameters and multi-channel cloud-top radiance was shown to be reasonable. The 1B01-2A25 dataset of pixel-merged data (1B01-2A25-PMD) contains cloud parameters for each PR pixel. The 1B01-2A25 gridded dataset (1B01-2A25-GD) was merged spatially with the ERA5 reanalysis data. The statistical results indicate that gridding has no unacceptable influence on the parameters in the 1B01-2A25-PMD. In one orbit, the difference in the mean value of the near-surface rain rate and the signals measured by the VIRS was no more than 0.87 and the standard deviation was no more than 2.38. The 1B01-2A25-GD and ERA5 datasets were spatiotemporally collocated to establish the merged 1B01-2A25 gridded dataset (M-1B01-2A25-GD). Three case studies of typical cloud and precipitation events were analyzed to illustrate the practical use of the M-1B01-2A25-GD. This new merged gridded dataset can be used to study clouds and precipitation systems and provides a perfect opportunity for multi-source data analysis and model simulations. The data which were used in this paper are freely available at http://doi.org/10.5281/zenodo.4458868 (Sun and Fu,2021).
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