Hybrid Bayesian-Machine Learning Framework for Multi-Profile Atmospheric Retrieval from Hyperspectral Infrared Observations
收藏中国科学数据2025-11-10 更新2026-04-25 收录
下载链接:
https://www.sciengine.com/AA/doi/10.1007/s00376-025-5070-9
下载链接
链接失效反馈官方服务:
资源简介:
Accurate retrieval of atmospheric vertical profiles is critical for improving weather prediction and climate monitoring. However, the complexity of atmospheric processes in cloudy regions poses challenges compared to those of clear sky scenarios. This study presents a novel framework that integrates Bayesian optimization and machine learning approaches to retrieve atmospheric vertical profiles—including temperature, humidity, ozone concentration, cloud fraction, ice water content (IWC), and liquid water content (LWC)—from hyperspectral infrared observations. Specifically, a Bayesian method was used to refine ERA5 reanalysis data by minimizing brightness temperature (BT) discrepancies against FY-4B Geostationary Interferometric Infrared Sounder (GIIRS) observations, generating a high-quality profile database (~2.8 million profiles) across diverse weather systems. The optimized profiles improve radiative consistency, reducing BT biases from > 40 K to –6/6.09 × 10–6 kg kg–1(IWC/LWC) across the entire vertical levels in all-sky conditions. The TERNet outperforms both ERA5 in cloud parameter retrieval and the GIIRS L2 product in thermodynamic profiling. Independent verification with radiosonde and Cloud-Aerosol Lidar and Infrared Pathfinder Satellite Observations (CALIPSO) datasets confirms the framework’s reliability across various meteorological regimes. This work demonstrates the capability of combining physics-informed Bayesian methods with data-driven machine learning to fully exploit hyperspectral IR data.
创建时间:
2025-11-10



