Barbouchi, Meriem; Lhissou, Rachid; Abdelfattah, Riadh; El Alem, Anas; Chokmani, Karem ORCID: https://orcid.org/0000-0003-0018-0761; Ben Aissa, Nadhira; Cheikh M’hamed, Hatem; Annabi, Mohamed et Bahri, Haithem (2022). The Potential of Using Radarsat-2 Satellite Image for Modeling and Mapping Wheat Yield in a Semiarid Environment. Agriculture , vol. 12 , nº 3. p. 315. DOI: 10.3390/agriculture12030315.
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Pedotransfer functions (PTFs) are empirical fits to soil property data and have been used as an alternative tool to in situ measurements for estimating soil hydraulic properties for the last few decades. PTFs of Saxton and Rawls, 2006 (PTFs’S&R.2006) are some of the most widely used because of their global aspect. However, empirical functions yield more accurate results when trained locally. This study proposes a set of agricultural PTFs developed for southern Quebec, Canada for three horizons (A, B, and C). Four response variables (bulk density (ρb), saturated hydraulic conductivity (Ksat), volumetric water content at field capacity (θ33), and permanent wilting point (θ1500)) and four predictors (clay, silt, organic carbon, and coarse fragment percentages) were used in this modeling process. The new PTFs were trained using the stepwise forward regression (SFR) and canonical correlation analysis (CCA) algorithms. The CCA- and SFR-PTFs were in most cases more accurate. Θ1500 and at θ33 estimates were improved with the SFR. The ρb in the A horizon was moderately estimated by the PTFs’S&R.2006, while the CCA- and SFR-PTFs performed equally well for the B and C horizons, yet qualified weak. However, for all PTFs for all horizons, Ksat estimates were unacceptable. Estimation of ρb and Ksat could be improved by considering other morphological predictors (soil structure, drainage information, etc.).Type de document: | Article |
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Mots-clés libres: | PolSAR; backscattering; polarimetric parameters; multiple regression; remote sensing |
Centre: | Centre Eau Terre Environnement |
Date de dépôt: | 28 mars 2022 17:32 |
Dernière modification: | 28 mars 2022 17:32 |
URI: | https://espace.inrs.ca/id/eprint/12541 |
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