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The Deep‐Learning‐Based Fast Efficient Nighttime Retrieval of Thermodynamic Phase From Himawari‐8 AHI Measurements

Xuan Tong, Jingwei Li, Feng Zhang, Wenwen Li, Baoxiang Pan, Jun Li, Husi Letu

2023Geophysical Research Letters18 citationsDOIOpen Access PDF

Abstract

Abstract Retrieval of the cloud thermodynamic phase (CP) is essential for satellite remote sensing and downstream applications. However, there is still a lack of efficient nighttime CP data products. A transfer‐learning‐based deep learning model, transfer‐learning‐ResUnet, is proposed to retrieve the nighttime CP of Himawari‐8 from thermal infrared channels. Cloud products of Himawari‐8 and Moderate‐resolution Imaging Spectroradiometers were selected as labels during training. A benchmark obtained by the Cloud‐Aerosol Lidar and Infrared Pathfinder Satellite Observations confirmed the accuracy of the CP retrieval. During three independent months, the daytime and nighttime retrieval accuracy of the CP was 0.867 and 0.816, respectively, which was superior to that of the Himawari‐8 operational product in the daytime (0.788).

Topics & Concepts

DaytimeEnvironmental scienceRemote sensingSatelliteModerate-resolution imaging spectroradiometerMeteorologySpectroradiometerLidarCloud topAtmospheric sciencesGeologyPhysicsReflectivityOpticsAstronomyAtmospheric aerosols and cloudsAtmospheric and Environmental Gas DynamicsAtmospheric chemistry and aerosols
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