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Please use this identifier to cite or link to this item:
http://hdl.handle.net/10174/35664
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Title: | Satellite-based estimation of soil organic carbon in Portuguese grasslands |
Authors: | Morais, Tiago G. Jongen, M. Tufik, C. Rodrigues, N.R. Gama, I. Serrano, João Gonçalves, M.C. Mano, R. Domingos, T. Teixeira, R.F.M. |
Editors: | Marghany, Maged |
Keywords: | remote sensing satellite cross-validation features selection sown biodiverse pasture |
Issue Date: | Aug-2023 |
Publisher: | Frontiers |
Citation: | Morais TG, Jongen M, Tufik C,
Rodrigues NR, Gama I, Serrano J,
Gonçalves MC, Mano R, Domingos T and
Teixeira RFM (2023), Satellite-based
estimation of soil organic carbon in
Portuguese grasslands.
Front. Environ. Sci. 11:1240106.
doi: 10.3389/fenvs.2023.1240106. |
Abstract: | Introduction: Soil organic carbon (SOC) sequestration is one of the main
ecosystem services provided by well-managed grasslands. In the
Mediterranean region, sown biodiverse pastures (SBP) rich in legumes are a
nature-based, innovative, and economically competitive livestock production
system. As a co-benefit of increased yield, they also contribute to carbon
sequestration through SOC accumulation. However, SOC monitoring in SBP
require time-consuming and costly field work.
Methods: In this study, we propose an expedited and cost-effective indirect
method to estimate SOC content. In this study, we developed models for
estimating SOC concentration by combining remote sensing (RS) and machine
learning (ML) approaches. We used field-measured data collected from nine
different farms during four production years (between 2017 and 2021). We
utilized RS data from both Sentinel-1 and Sentinel-2, including reflectance
bands and vegetation indices. We also used other covariates such as climatic,
soil, and terrain variables, for a total of 49 inputs. To reduce multicollinearity
problems between the different variables, we performed feature selection using
the sequential feature selection approach. We then estimated SOC content using
both the complete dataset and the selected features. Multiple ML methods were
tested and compared, including multiple linear regression (MLR), random forests
(RF), extreme gradient boosting (XGB), and artificial neural networks (ANN). We
used a random cross-validation approach (with 10 folds). To find the
hyperparameters that led to the best performance, we used a Bayesian
optimization approach.
Results: Results showed that the XGB method led to higher estimation accuracy
than the other methods, and the estimation performance was not significantly
influenced by the feature selection approach. For XGB, the average root mean
square error (RMSE), measured on the test set among all folds, was 2.78 g kg−1 (r2
equal to 0.68) without feature selection, and 2.77 g kg−1 (r2 equal to 0.68) with
feature selection (average SOC content is 13 g kg−1
). The models were applied to
obtain SOC content maps for all farms.Discussion: This work demonstrated that combining RS and ML can help obtain
quick estimations of SOC content to assist with SBP management. |
URI: | http://hdl.handle.net/10174/35664 |
Type: | article |
Appears in Collections: | ERU - Publicações - Artigos em Revistas Internacionais Com Arbitragem Científica MED - Publicações - Artigos em Revistas Internacionais Com Arbitragem Científica
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