High-resolution ensemble retrieval of cloud properties for all-day based on geostationary satellite
Haixia Xiao, Feng Zhang, Lingxiao Wang, Baoxiang Pan, Yannian Zhu, Minghuai Wang, Wenwen Li, Bin Guo, Jun Li

TL;DR
This paper introduces CloudDiff, a generative diffusion model-based method for high-resolution, all-day cloud property retrieval from geostationary satellite data, enabling uncertainty quantification and improved accuracy.
Contribution
The study presents a novel generative diffusion approach for cloud retrieval that enhances resolution, captures uncertainty, and improves the precision of cloud property estimates from satellite observations.
Findings
CloudDiff increases retrieval resolution from 2 km to 1 km.
It generates diverse plausible cloud property samples, enabling uncertainty quantification.
Ensemble averaging improves accuracy and reliability of cloud retrievals.
Abstract
Clouds play a critical role in Earth's hydrological and energy cycles, and accurately representing their properties is essential for effective numerical modeling and weather forecasting. Machine learning methods have been widely used for cloud property retrieval; however, most existing techniques are deterministic and do not incorporate uncertainty quantification. Generative machine learning has made significant advances in various domains, including natural language processing, image generation, and notably weather forecasting, where it has enabled ensemble predictions and the quantification of forecast uncertainty. This ability to quantify uncertainty offers valuable opportunities for cloud remote sensing. In this study, we propose a novel cloud property retrieval method, CloudDiff, based on a generative diffusion model. By leveraging thermal infrared observations from the Himawari-8…
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Taxonomy
TopicsRemote Sensing in Agriculture · Solar Radiation and Photovoltaics · Advanced Image Fusion Techniques
