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Hyperspectral Sounder Spectral Fingerprinting: Using Machine Learning Techniques to Enhance Model-Based Physical InversionDifferent retrieval algorithms have been developed to process top-of-atmosphere (TOA) spectral radiance data provided by hyperspectral infrared sounder missions. Those algorithms are either optimal estimation method (OEM) based schemes with radiative transfer calculation involved in the retrieval process, or machine learning based methods that allow ultra-efficient data procession but lack of radiometric consistency validation based on the directly measured information. Combining both approaches leverages their respective technical advantages, leading to more accurate results. This study introduces a hyperspectral sounder fingerprinting algorithm to explore this hybrid approach. This approach involves the use of a spectral information-based classification method to identify an reference geophysical state and the corresponding radiative kernel. This enables the efficient retrieval of geophysical variables of interest through a radiative kernel-based linear inversion procedure. The fingerprinting method has been applied to analyze a decade-long hyperspectral sounder data record.
Document ID
20240008181
Acquisition Source
Langley Research Center
Document Type
Presentation
Authors
Wan Wu
(Langley Research Center Hampton, United States)
Xu Liu
(Langley Research Center Hampton, United States)
Liqiao Lei
(Adnet Systems (United States) Bethesda, Maryland, United States)
Xiaozhen Xiong
(Langley Research Center Hampton, United States)
Qiguang Yang
(Adnet Systems (United States) Bethesda, Maryland, United States)
Qing Yue
(Jet Propulsion Laboratory La Cañada Flintridge, United States)
Sun Wong
(Jet Propulsion Laboratory La Cañada Flintridge, United States)
Tao Wang
(Jet Propulsion Laboratory La Cañada Flintridge, United States)
Lihang Zhou
(National Oceanic and Atmospheric Administration Washington, United States)
Daniel K. Zhou
(Langley Research Center Hampton, United States)
Allen M. Larar
(Langley Research Center Hampton, United States)
Date Acquired
June 27, 2024
Subject Category
Computer Programming and Software
Meeting Information
Meeting: 2024 IEEE International Geoscience and Remote Sensing Symposium
Location: Athens
Country: GR
Start Date: July 7, 2024
End Date: July 12, 2024
Sponsors: Institute of Electrical and Electronics Engineers
Funding Number(s)
WBS: 217140.04.10.02.01.01
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
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