Spatio-temporal topsoil organic carbon mapping of a semi-arid Mediterranean region: The role of land use, soil texture, topographic indices and the influence of remote sensing data to modelling
KAUST DepartmentPhysical Sciences and Engineering (PSE) Division
Computer, Electrical and Mathematical Sciences and Engineering (CEMSE) Division
MetadataShow full item record
AbstractSOC is the most important indicator of soil fertility and monitoring its space-time changes is a prerequisite to establish strategies to reduce soil loss and preserve its quality. Here we modelled the topsoil (0–0.3m) SOC concentration of the cultivated area of Sicily in 1993 and 2008. Sicily is an extremely variable region with a high number of ecosystems, soils, and microclimates. We studied the role of time and land use in the modelling of SOC, and assessed the role of remote sensing (RS) covariates in the boosted regression trees modelling. The models obtained showed a high pseudo-R2 (0.63–0.69) and low uncertainty (s.d.<0.76gCkg−1 with RS, and <1.25gCkg−1 without RS). These outputs allowed depicting a time variation of SOC at 1arcsec. SOC estimation strongly depended on the soil texture, land use, rainfall and topographic indices related to erosion and deposition. RS indices captured one fifth of the total variance explained, slightly changed the ranking of variance explained by the non-RS predictors, and reduced the variability of the model replicates. During the study period, SOC decreased in the areas with relatively high initial SOC, and increased in the area with high temperature and low rainfall, dominated by arables. This was likely due to the compulsory application of some Good Agricultural and Environmental practices. These results confirm that the importance of texture and land use in short-term SOC variation is comparable to climate. The present results call for agronomic and policy intervention at the district level to maintain fertility and yield potential. In addition, the present results suggest that the application of RS covariates enhanced the modelling performance.
CitationSchillaci C, Acutis M, Lombardo L, Lipani A, Fantappiè M, et al. (2017) Spatio-temporal topsoil organic carbon mapping of a semi-arid Mediterranean region: The role of land use, soil texture, topographic indices and the influence of remote sensing data to modelling. Science of The Total Environment 601-602: 821–832. Available: http://dx.doi.org/10.1016/j.scitotenv.2017.05.239.
SponsorsThe authors are grateful to Maria Gabriella Matranga, Vito Ferraro and Fabio Guaitoli from the Regional Bureau for Agriculture, rural Development and Mediterranean Fishery, the Department of Agriculture, Service 7 UOS7.03 Geographical Information Systems, Cartography and Broadband Connection in Agriculture, Palermo. The authors also thank three anonymous reviewers for their constructive comments, which helped to improve the manuscript.
JournalScience of The Total Environment
- High resolution mapping of soil organic carbon stocks using remote sensing variables in the semi-arid rangelands of eastern Australia.
- Authors: Wang B, Waters C, Orgill S, Gray J, Cowie A, Clark A, Liu L
- Issue date: 2018 Jul 15
- Combining Soil Databases for Topsoil Organic Carbon Mapping in Europe.
- Authors: Aksoy E, Yigini Y, Montanarella L
- Issue date: 2016
- Spatial 3D distribution of soil organic carbon under different land use types.
- Authors: Amirian Chakan A, Taghizadeh-Mehrjardi R, Kerry R, Kumar S, Khordehbin S, Yusefi Khanghah S
- Issue date: 2017 Mar
- Carbon storage capacity of semi-arid grassland soils and sequestration potentials in northern China.
- Authors: Wiesmeier M, Munro S, Barthold F, Steffens M, Schad P, Kögel-Knabner I
- Issue date: 2015 Oct
- Modeling Soil Organic Carbon at Regional Scale by Combining Multi-Spectral Images with Laboratory Spectra.
- Authors: Peng Y, Xiong X, Adhikari K, Knadel M, Grunwald S, Greve MH
- Issue date: 2015