Rapid detection of soil carbonates by means of NIR spectroscopy, deep learning methods and phase quantification by powder Xray diffraction
Lykourgos Chiniadis, Petros Tamvakis

TL;DR
This study develops a rapid, deep learning-based method using NIR spectroscopy to predict soil carbonate content, validated on extensive spectral libraries, offering a non-destructive alternative to traditional volumetric methods.
Contribution
It introduces a novel deep learning approach trained on large spectral datasets for accurate soil carbonate prediction from NIR spectra alone.
Findings
Deep learning models outperform traditional ML algorithms in carbonate prediction.
NIR spectroscopy combined with deep learning provides accurate, rapid soil carbonate quantification.
The method is validated on extensive, diverse soil spectral libraries, demonstrating robustness.
Abstract
Soil NIR spectral absorbance/reflectance libraries are utilized towards improving agricultural production and analysis of soil properties which are key prerequisite for agroecological balance and environmental sustainability. Carbonates in particular, represent a soil property which is mostly affected even by mild, let alone extreme, changes of environmental conditions during climate change. In this study we propose a rapid and efficient way to predict carbonates content in soil by means of FT NIR reflectance spectroscopy and by use of deep learning methods. We exploited multiple machine learning methods, such as: 1) a MLP Regressor and 2) a CNN and compare their performance with other traditional ML algorithms such as PLSR, Cubist and SVM on the combined dataset of two NIR spectral libraries: KSSL (USDA), a dataset of soil samples reflectance spectra collected nationwide, and LUCAS…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses · Spectroscopy Techniques in Biomedical and Chemical Research · Smart Agriculture and AI
MethodsSupport Vector Machine
