4.6 Article

Evaluating the Representations of Atmospheric Rivers and Their Associated Precipitation in Reanalyses With Satellite Observations

Journal

JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES
Volume 128, Issue 22, Pages -

Publisher

AMER GEOPHYSICAL UNION
DOI: 10.1029/2023JD038937

Keywords

atmospheric rivers; satellite observations; reanalysis evaluation

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This study developed an AR detection algorithm for satellite observations and evaluated the representation of ARs and AR-induced precipitation in reanalysis products. The results showed that reanalysis products consistently underestimated AR-related precipitation and had excessive precipitation in low latitude regions. These findings can help improve the representation of ARs and associated precipitation in reanalyses and climate models.
Atmospheric rivers (ARs) are filaments of enhanced horizontal moisture transport in the atmosphere. Due to their prominent role in the meridional moisture transport and regional weather extremes, ARs have been studied extensively in recent years. Yet, the representations of ARs and their associated precipitation on a global scale remains largely unknown. In this study, we developed an AR detection algorithm specifically for satellite observations using moisture and the geostrophic winds derived from 3D geopotential height field from the combined retrievals of the Atmospheric Infrared Sounder and the Advanced Microwave Sounding Unit on NASA Aqua satellite. This algorithm enables us to develop the first global AR catalog based solely on satellite observations. The satellite-based AR catalog is then combined with the satellite-based precipitation (Integrated Muti-SatellitE Retrievals for GPM) to evaluate the representations of ARs and AR-induced precipitation in reanalysis products. Our results show that the spreads in AR frequency and AR length distribution are generally small across data sets, while the spread in AR width is relatively larger. Reanalysis products are found to consistently underestimate both mean and extreme AR-related precipitation. However, all reanalyses tend to precipitate too often under AR conditions, especially over low latitude regions. This finding is consistent with the drizzling bias which has plagued generations of climate models. Overall, the findings of this study can help to improve the representations of ARs and associated precipitation in reanalyses and climate models.

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