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@ARTICLE{Pato:1048174,
author = {Pato, Miguel and Alonso, Kevin and Buffat, Jim and Auer,
Stefan and Carmona, Emiliano and Maier, Stefan and Müller,
Rupert and Rademske, Patrick and Rascher, Uwe and Scharr,
Hanno},
title = {{S}imulation framework for solar-induced fluorescence
retrieval and application to {DESIS} and {H}y{P}lant},
journal = {Remote sensing of environment},
volume = {330},
issn = {0034-4257},
address = {Amsterdam [u.a.]},
publisher = {Elsevier Science},
reportid = {FZJ-2025-04536},
pages = {114944 -},
year = {2025},
abstract = {Fluorescence light emitted by chlorophyll in plants is a
direct probe of the photosynthetic process and can be used
to continuously monitor vegetation status. Retrieving
solar-induced fluorescence (SIF) using a machine learning
(ML) approach promises to take full advantage of airborne
and satellite-based instruments to map expected vegetation
function over wide areas on a regular basis. This work takes
a first step towards developing a ML-based SIF retrieval
method. A general-purpose framework for the simulation of
at-sensor radiances is introduced and applied to the case of
SIF retrieval in the oxygen absorption band O2-A with the
spaceborne DESIS and airborne HyPlant spectrometers. The
sensor characteristics are modelled carefully based on
calibration and in-flight data and can be extended to other
instruments including the upcoming FLEX mission. A
comprehensive dataset of simulated at-sensor radiance
spectra is then assembled encompassing the most important
atmosphere, geometry, surface and sensor properties. The
simulated dataset is employed to train emulators capable of
generating at-sensor radiances with sub-percent errors in
tens of μs, opening the way for their routine use in SIF
retrieval. The simulated spectra are shown to closely
reproduce real data acquired by DESIS and HyPlant and can
ultimately be used to develop a robust ML-based SIF
retrieval scheme for these and other remote sensing
spectrometers. Finally, the SIF retrieval performance of the
3FLD method is quantitatively assessed for different on- and
off-band configurations in order to identify the best band
combinations. This highlights how our simulation framework
enables the optimization of SIF retrieval methods to achieve
the best possible performance for a given instrument.},
cin = {IBG-2 / IAS-8},
ddc = {550},
cid = {I:(DE-Juel1)IBG-2-20101118 / I:(DE-Juel1)IAS-8-20210421},
pnm = {2173 - Agro-biogeosystems: controls, feedbacks and impact
(POF4-217) / 5112 - Cross-Domain Algorithms, Tools, Methods
Labs (ATMLs) and Research Groups (POF4-511)},
pid = {G:(DE-HGF)POF4-2173 / G:(DE-HGF)POF4-5112},
typ = {PUB:(DE-HGF)16},
doi = {10.1016/j.rse.2025.114944},
url = {https://juser.fz-juelich.de/record/1048174},
}