Machine Learning Techniques for Estimating Hydraulic Properties of the Topsoil across the Zambezi River Basin
Mulenga Kalumba,
Edwin Nyirenda,
Imasiku Nyambe,
Stefaan Dondeyne and
Jos Van Orshoven
Additional contact information
Mulenga Kalumba: Department of Earth and Environmental Sciences, University of Leuven, Celestijnenlaan 200E, 3001 Leuven, Belgium
Edwin Nyirenda: Department of Civil and Environmental Engineering, School of Engineering, The University of Zambia, Lusaka P.O. Box 32379, Zambia
Imasiku Nyambe: Department of Geology, School of Mines, The University of Zambia, Lusaka P.O. Box 32379, Zambia
Stefaan Dondeyne: Department of Geography, Ghent University, Krijgslaan 281 S8, 9000 Gent, Belgium
Jos Van Orshoven: Department of Earth and Environmental Sciences, University of Leuven, Celestijnenlaan 200E, 3001 Leuven, Belgium
Land, 2022, vol. 11, issue 4, 1-22
Abstract:
It is critical to produce more crop per drop in an environment where water availability is decreasing and competition for water is increasing. In order to build such agricultural production systems, well parameterized crop growth models are essential. While in most crop growth modeling research, focus is on gathering model inputs such as climate data, less emphasis is paid to collecting the critical soil hydraulic properties (SHPs) data needed to operate crop growth models. Collection of SHPs data for the Zambezi River Basin (ZRB) is extremely labor-intensive and expensive, thus alternate technologies such as digital soil mapping (DSM) must be explored. We evaluated five types of DSM models to establish the best spatially explicit estimates of the soil water content at pF0.0 (saturation), pF2.0 (field capacity), and pF4.2 (wilting point), and of the saturated hydraulic conductivity (Ksat) across the ZRB by using estimates of locally calibrated pedotransfer functions of 1481 locations for training and testing the DSM models, as well as a reference dataset of measurements from 174 locations for validating the DSM models. We produced coverages of environmental covariates from various source datasets, including climate variables, soil and land use maps, parent materials and lithologic units, derivatives of a digital elevation model (DEM), and Landsat imagery with a spatial resolution of 90 m. The five types of models included multiple linear regression and four machine learning techniques: artificial neural network, gradient boosted regression trees, random forest, and support vector machine. Where the residuals of the initial DSM models were spatially autocorrelated, the models were extended/complemented with residual kriging (RK). Spatial autocorrelation in the model residuals was observed for all five models of each of the three water contents, but not for Ksat. On average for the water content, the R 2 ranged from 0.40 to 0.80 in training and test datasets before adding kriged model residuals and ranged from 0.80 to 0.95 after adding model residuals. Overall, the best prediction method consisted of random forest as the deterministic model, complemented with RK, whereby soil texture followed by climate and topographic elevation variables were the most important covariates. The resulting maps are a ready-to-use resource for hydrologists and crop modelers to aliment and calibrate their hydrological and crop growth models.
Keywords: digital soil mapping; multilinear regression; residual kriging; saturated hydraulic conductivity; spatial autocorrelation; water retention (search for similar items in EconPapers)
JEL-codes: Q15 Q2 Q24 Q28 Q5 R14 R52 (search for similar items in EconPapers)
Date: 2022
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Citations: View citations in EconPapers (1)
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Persistent link: https://EconPapers.repec.org/RePEc:gam:jlands:v:11:y:2022:i:4:p:591-:d:796577
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