International audiencePortable mid-infrared spectroscopy (pMIRS) combined with machine learning was used to predict selected parameters for soil organic carbon (SOC) storage. In particular, SOC, soil inorganic C (SIC), hot-water extractable C (hwC), clay and sand content were predicted for ten vineyards with varying geopedological settings. As a pre-test, spectra were collected from sieved and pressed tablets with 30 and 90 kPa respectively and compared to powdery samples in order to optimise sample preparation. Further, spectra from 30 kPa tablets were used to calibrate prediction models for a sample set (n = 540) of 10 vineyards with pronounced geopedological variation using Support Vector Machines (SVM). The calibrated SVM models perform...
International audienceNear infrared (NIR) and mid-infrared (mid-IR) reflectance spectroscopy are tim...
External factors including moisture content negatively affect the prediction accuracy of soil organi...
The future of global food security and economic stability continue to raise increasing concern, as t...
International audiencePortable mid-infrared spectroscopy (pMIRS) combined with machine learning was ...
Mid-infrared reflectance spectroscopy (MIRS, 4000-400 cm-1) is being considered to provide accurate ...
Assessing soil organic carbon (SOC) stocks is a methodological issue for SOC monitoring at regional ...
This work aimed to evaluate the potential of mid-infrared reflectance spectroscopy (MIRS) to predict...
[Abstract] Soil Organic Carbon (SOC) content is a key element for soil fertility and productivity, n...
A carbonate (CO3) prediction model was developed for soils throughout the contiguous United States u...
Resource-efficient techniques for accurate soil carbon estimation are necessary to satisfy the incre...
The non-destructive and rapid estimation of soil total carbon (SOC) content with mid-infrared spectr...
International audienceMid-infrared reflectance spectroscopy (MIRS) is time- and cost-effective. It w...
International audienceMid-Infrared reflectance spectroscopy (MIRS, 4000 – 400 cm-1) is being conside...
International audienceNear infrared (NIR) and mid-infrared (mid-IR) reflectance spectroscopy are tim...
External factors including moisture content negatively affect the prediction accuracy of soil organi...
The future of global food security and economic stability continue to raise increasing concern, as t...
International audiencePortable mid-infrared spectroscopy (pMIRS) combined with machine learning was ...
Mid-infrared reflectance spectroscopy (MIRS, 4000-400 cm-1) is being considered to provide accurate ...
Assessing soil organic carbon (SOC) stocks is a methodological issue for SOC monitoring at regional ...
This work aimed to evaluate the potential of mid-infrared reflectance spectroscopy (MIRS) to predict...
[Abstract] Soil Organic Carbon (SOC) content is a key element for soil fertility and productivity, n...
A carbonate (CO3) prediction model was developed for soils throughout the contiguous United States u...
Resource-efficient techniques for accurate soil carbon estimation are necessary to satisfy the incre...
The non-destructive and rapid estimation of soil total carbon (SOC) content with mid-infrared spectr...
International audienceMid-infrared reflectance spectroscopy (MIRS) is time- and cost-effective. It w...
International audienceMid-Infrared reflectance spectroscopy (MIRS, 4000 – 400 cm-1) is being conside...
International audienceNear infrared (NIR) and mid-infrared (mid-IR) reflectance spectroscopy are tim...
External factors including moisture content negatively affect the prediction accuracy of soil organi...
The future of global food security and economic stability continue to raise increasing concern, as t...