2014
DOI: 10.1016/j.geoderma.2013.09.022
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Effect of the number of calibration samples on the prediction of several soil properties at the farm-scale

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Cited by 82 publications
(50 citation statements)
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References 36 publications
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“…Our results confirm previous research (Reeves et al, 2009;Stenberg et al, 2010;Debaene et al, 2014) on the suitability of VIS-NIRS for rapid analysis of several soil properties, especially N and SOC content (Aïchi et al, 2009;Ladoni et al, 2010). This was the first attempt at predicting Hh using VIS-NIRS technology (r 2 = 0.60; RMSE = 0.19), a very important parameter for light acidic soils.…”
Section: Support Vector Machine Classification Of the Samplessupporting
confidence: 89%
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“…Our results confirm previous research (Reeves et al, 2009;Stenberg et al, 2010;Debaene et al, 2014) on the suitability of VIS-NIRS for rapid analysis of several soil properties, especially N and SOC content (Aïchi et al, 2009;Ladoni et al, 2010). This was the first attempt at predicting Hh using VIS-NIRS technology (r 2 = 0.60; RMSE = 0.19), a very important parameter for light acidic soils.…”
Section: Support Vector Machine Classification Of the Samplessupporting
confidence: 89%
“…Thus, PCA is not ideal for grouping samples according to land management. The mathematical pretreatment did not improve the prediction results as was observed previously (Debaene et al, 2014). No other patterns were observed.…”
Section: Partial Least Square Regression and Predictionsupporting
confidence: 60%
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“…This result can be explained by the effects on reflectance spectra caused by variations in size, shape and arrangement of soil particles in the samples of the calibration set. In 199 samples from an experimental area in Poland, Debaene et al (2014) calculated an R 2 of 0.73 in the prediction of clay content, with RMSE of 0.32 %. The low RMSE value obtained by these authors was due to the homogeneity of soil types and the large size of the experimental area (53.6 ha).…”
Section: Clay = 4368 + (-7271×r420) + (4301×r440) + (-31600×r460) +mentioning
confidence: 99%
“…partial least square regression, Pls) and also to interpret spectra. Principal component analysis (Pca) or clustering methods based on spectral data are usually able to classify samples according to different soil properties of interest for a specific study (Debaene et al 2014a, Vasques et al 2014). most of the soil properties necessary for soil characterization according to the world reference base (wrb) for soil resources (world reference base…, 2014) have been successfully predicted with Vis-nir models In situ measures allow for faster and cheaper analyses and are environmentally friendly.…”
Section: Introductionmentioning
confidence: 99%