An Emulator Toolbox to Approximate Radiative Transfer Models with Statistical Learning

Physically-based radiative transfer models (RTMs) help in understanding the processes occurring on the Earth’s surface and their interactions with vegetation and atmosphere. When it comes to studying vegetation properties, RTMs allows us to study light interception by plant canopies and are used in...

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Main Authors: Juan Pablo Rivera, Jochem Verrelst, Jose Gómez-Dans, Jordi Muñoz-Marí, José Moreno, Gustau Camps-Valls
Format: Article
Language:English
Published: MDPI AG 2015-07-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/7/7/9347
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spelling doaj-5748dbde1d484c3688c216031498458d2020-11-24T22:43:08ZengMDPI AGRemote Sensing2072-42922015-07-01779347937010.3390/rs70709347rs70709347An Emulator Toolbox to Approximate Radiative Transfer Models with Statistical LearningJuan Pablo Rivera0Jochem Verrelst1Jose Gómez-Dans2Jordi Muñoz-Marí3José Moreno4Gustau Camps-Valls5Image Processing Laboratory (IPL), Parc Científic, Universitat de València, 46980 Paterna, València, SpainImage Processing Laboratory (IPL), Parc Científic, Universitat de València, 46980 Paterna, València, SpainDepartment of Geography, University College London, London WC1E 6BT, UKImage Processing Laboratory (IPL), Parc Científic, Universitat de València, 46980 Paterna, València, SpainImage Processing Laboratory (IPL), Parc Científic, Universitat de València, 46980 Paterna, València, SpainImage Processing Laboratory (IPL), Parc Científic, Universitat de València, 46980 Paterna, València, SpainPhysically-based radiative transfer models (RTMs) help in understanding the processes occurring on the Earth’s surface and their interactions with vegetation and atmosphere. When it comes to studying vegetation properties, RTMs allows us to study light interception by plant canopies and are used in the retrieval of biophysical variables through model inversion. However, advanced RTMs can take a long computational time, which makes them unfeasible in many real applications. To overcome this problem, it has been proposed to substitute RTMs through so-called emulators. Emulators are statistical models that approximate the functioning of RTMs. Emulators are advantageous in real practice because of the computational efficiency and excellent accuracy and flexibility for extrapolation. We hereby present an “Emulator toolbox” that enables analysing multi-output machine learning regression algorithms (MO-MLRAs) on their ability to approximate an RTM. The toolbox is included in the free-access ARTMO’s MATLAB suite for parameter retrieval and model inversion and currently contains both linear and non-linear MO-MLRAs, namely partial least squares regression (PLSR), kernel ridge regression (KRR) and neural networks (NN). These MO-MLRAs have been evaluated on their precision and speed to approximate the soil vegetation atmosphere transfer model SCOPE (Soil Canopy Observation, Photochemistry and Energy balance). SCOPE generates, amongst others, sun-induced chlorophyll fluorescence as the output signal. KRR and NN were evaluated as capable of reconstructing fluorescence spectra with great precision. Relative errors fell below 0.5% when trained with 500 or more samples using cross-validation and principal component analysis to alleviate the underdetermination problem. Moreover, NN reconstructed fluorescence spectra about 50-times faster and KRR about 800-times faster than SCOPE. The Emulator toolbox is foreseen to open new opportunities in the use of advanced RTMs, in which both consistent physical assumptions and data-driven machine learning algorithms live together.http://www.mdpi.com/2072-4292/7/7/9347emulatormachine learningradiative transfer modelsmulti-outputARTMOGUI toolboxFLEXfluorescence
collection DOAJ
language English
format Article
sources DOAJ
author Juan Pablo Rivera
Jochem Verrelst
Jose Gómez-Dans
Jordi Muñoz-Marí
José Moreno
Gustau Camps-Valls
spellingShingle Juan Pablo Rivera
Jochem Verrelst
Jose Gómez-Dans
Jordi Muñoz-Marí
José Moreno
Gustau Camps-Valls
An Emulator Toolbox to Approximate Radiative Transfer Models with Statistical Learning
Remote Sensing
emulator
machine learning
radiative transfer models
multi-output
ARTMO
GUI toolbox
FLEX
fluorescence
author_facet Juan Pablo Rivera
Jochem Verrelst
Jose Gómez-Dans
Jordi Muñoz-Marí
José Moreno
Gustau Camps-Valls
author_sort Juan Pablo Rivera
title An Emulator Toolbox to Approximate Radiative Transfer Models with Statistical Learning
title_short An Emulator Toolbox to Approximate Radiative Transfer Models with Statistical Learning
title_full An Emulator Toolbox to Approximate Radiative Transfer Models with Statistical Learning
title_fullStr An Emulator Toolbox to Approximate Radiative Transfer Models with Statistical Learning
title_full_unstemmed An Emulator Toolbox to Approximate Radiative Transfer Models with Statistical Learning
title_sort emulator toolbox to approximate radiative transfer models with statistical learning
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2015-07-01
description Physically-based radiative transfer models (RTMs) help in understanding the processes occurring on the Earth’s surface and their interactions with vegetation and atmosphere. When it comes to studying vegetation properties, RTMs allows us to study light interception by plant canopies and are used in the retrieval of biophysical variables through model inversion. However, advanced RTMs can take a long computational time, which makes them unfeasible in many real applications. To overcome this problem, it has been proposed to substitute RTMs through so-called emulators. Emulators are statistical models that approximate the functioning of RTMs. Emulators are advantageous in real practice because of the computational efficiency and excellent accuracy and flexibility for extrapolation. We hereby present an “Emulator toolbox” that enables analysing multi-output machine learning regression algorithms (MO-MLRAs) on their ability to approximate an RTM. The toolbox is included in the free-access ARTMO’s MATLAB suite for parameter retrieval and model inversion and currently contains both linear and non-linear MO-MLRAs, namely partial least squares regression (PLSR), kernel ridge regression (KRR) and neural networks (NN). These MO-MLRAs have been evaluated on their precision and speed to approximate the soil vegetation atmosphere transfer model SCOPE (Soil Canopy Observation, Photochemistry and Energy balance). SCOPE generates, amongst others, sun-induced chlorophyll fluorescence as the output signal. KRR and NN were evaluated as capable of reconstructing fluorescence spectra with great precision. Relative errors fell below 0.5% when trained with 500 or more samples using cross-validation and principal component analysis to alleviate the underdetermination problem. Moreover, NN reconstructed fluorescence spectra about 50-times faster and KRR about 800-times faster than SCOPE. The Emulator toolbox is foreseen to open new opportunities in the use of advanced RTMs, in which both consistent physical assumptions and data-driven machine learning algorithms live together.
topic emulator
machine learning
radiative transfer models
multi-output
ARTMO
GUI toolbox
FLEX
fluorescence
url http://www.mdpi.com/2072-4292/7/7/9347
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