Article (Scientific journals)
Evaluation of modelling approaches for predicting the spatial distribution of soil organic carbon stocks at the national scale
Martin, M. P.; Orton, T. G.; Lacarce, E. et al.
2014In Geoderma, 223-225 (1), p. 97-107
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Keywords :
Boosted regression trees; Geostatistics; National accounting; Soil organic carbon; Spatial distributions; Carbon; Climate change; Complex networks; Forecasting; Forestry; Regression analysis; Soils; Spatial distribution; Spatial variables measurement; Statistical tests; Geo-statistics; Geostatistical modelling; Multiple regression model; Soil organic Carbon stocks; Spatial autocorrelations; Soil testing; Forecasts; Seasonal Variation; Soil; Statistical Analysis; France
Abstract :
[en] Soil organic carbon (SOC) plays a major role in the global carbon budget. It can act as a source or a sink of atmospheric carbon, thereby possibly influencing the course of climate change. Improving the tools that model the spatial distributions of SOC stocks at national scales is a priority, both for monitoring changes in SOC and as an input for global carbon cycles studies. In this paper, we compare and evaluate two recent and promising modelling approaches. First, we considered several increasingly complex boosted regression trees (BRT), a convenient and efficient multiple regression model from the statistical learning field. Further, we considered a robust geostatistical approach coupled to the BRT models. Testing the different approaches was performed on the dataset from the French Soil Monitoring Network, with a consistent cross-validation procedure. We showed that when a limited number of predictors were included in the BRT model, the standalone BRT predictions were significantly improved by robust geostatistical modelling of the residuals. However, when data for several SOC drivers were included, the standalone BRT model predictions were not significantly improved by geostatistical modelling. Therefore, in this latter situation, the BRT predictions might be considered adequate without the need for geostatistical modelling, provided that i) care is exercised in model fitting and validating, and ii) the dataset does not allow for modelling of local spatial autocorrelations, as is the case for many national systematic sampling schemes. © 2014 Elsevier B.V.
Disciplines :
Environmental sciences & ecology
Author, co-author :
Martin, M. P.;  INRA, US1106 Unité Infosol, F-45000 Orléans, France
Orton, T. G.;  Faculty of Agriculture and Environment, The University of Sydney, 1 Central Avenue, Australia Technology Park, Eveleigh, NSW 2015, Australia
Lacarce, E.;  INRA, US1106 Unité Infosol, F-45000 Orléans, France
Meersmans, Jeroen  ;  Université de Liège - ULiège > Département GxABT > Analyse des risques environnementaux
Saby, N. P. A.;  INRA, US1106 Unité Infosol, F-45000 Orléans, France
Paroissien, J. B.;  INRA, US1106 Unité Infosol, F-45000 Orléans, France
Jolivet, C.;  INRA, US1106 Unité Infosol, F-45000 Orléans, France
Boulonne, L.;  INRA, US1106 Unité Infosol, F-45000 Orléans, France
Arrouays, D.;  INRA, US1106 Unité Infosol, F-45000 Orléans, France
Language :
English
Title :
Evaluation of modelling approaches for predicting the spatial distribution of soil organic carbon stocks at the national scale
Publication date :
2014
Journal title :
Geoderma
ISSN :
0016-7061
eISSN :
1872-6259
Publisher :
Elsevier
Volume :
223-225
Issue :
1
Pages :
97-107
Peer reviewed :
Peer Reviewed verified by ORBi
Funders :
Ministère de l'Agriculture, de l'Agroalimentaire et de la Forêt, MAAFEuropean Commission, EC: FP7-ENV-2009-1-244122Agence de l'Environnement et de la Maîtrise de l'Energie, ADEME
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