Author
Listed:
- Marlon Jose Yacomelo Hernández
(AGROSAVIA (Corporación Colombiana de Investigación Agropecuaria), Vía Mosquera Km 14, Mosquera 250047, Colombia)
- William Ipanaqué Alama
(Faculty of Engineering, University of Piura, Av. Ramón Mugica 131, Urb. San Eduardo, Piura 20009, Peru)
- Andrea C. Montenegro
(AGROSAVIA (Corporación Colombiana de Investigación Agropecuaria), Vía Mosquera Km 14, Mosquera 250047, Colombia)
- Oscar de Jesús Córdoba
(Department of Agronomic Sciences, Faculty of Agricultural Sciences, Universidad Nacional de Colombia, Sede Medellín, Carrera 65 No. 59A-110, Medellín 050034, Colombia)
- Darío Castañeda Sanchez
(Department of Agronomic Sciences, Faculty of Agricultural Sciences, Universidad Nacional de Colombia, Sede Medellín, Carrera 65 No. 59A-110, Medellín 050034, Colombia)
- Cesar Vargas García
(AGROSAVIA (Corporación Colombiana de Investigación Agropecuaria), Vía Mosquera Km 14, Mosquera 250047, Colombia)
- Elias Flórez Cordero
(AGROSAVIA (Corporación Colombiana de Investigación Agropecuaria), Vía Mosquera Km 14, Mosquera 250047, Colombia)
- Jim Castillo Quezada
(Faculty of Engineering, University of Piura, Av. Ramón Mugica 131, Urb. San Eduardo, Piura 20009, Peru)
- Carlos Pacherres Herrera
(Faculty of Engineering, University of Piura, Av. Ramón Mugica 131, Urb. San Eduardo, Piura 20009, Peru)
- Luis Fernando Prado-Castillo
(ICPET (Instituto Colombiano del Petróleo y Energías de la Transición), Vía Piedecuesta Km 7, Piedecuesta 681018, Colombia)
- Oscar Casas Leuro
(ICPET (Instituto Colombiano del Petróleo y Energías de la Transición), Vía Piedecuesta Km 7, Piedecuesta 681018, Colombia)
Abstract
Soil organic carbon (SOC) is an essential indicator of soil fertility, health, and carbon sequestration capacity. Its proper management improves soil structure, productivity, and resilience to climate change, making rapid and reliable SOC assessment essential for sustainable agriculture. Visible and near-infrared (Vis–NIR) spectroscopy offers a non-destructive and cost-effective alternative to conventional laboratory analyses, allowing for the simultaneous estimation of multiple soil properties from a single spectrum. This study aimed to predict SOC content using machine learning techniques applied to Vis–NIR spectra of 860 soil samples collected in the Sierra Nevada de Santa Marta, Colombia. The spectra (400–2500 nm) were acquired using a NIR spectrophotometer, and the soil organic carbon (SOC) content was quantified using a wet oxidation method that employs dichromate in an acidic medium. A hybrid modeling framework combining Random Forest (RF) with support vector regression (SVR) and XGBoost was implemented. Spectral pretreatments (Savitzky–Golay first derivative, MSC, and SNV) were compared, and spectral bands were selected every 10 nm. The 30 most relevant wavelengths were identified using RF importance analysis. Data were divided into training (80%) and test (20%) subsets using stratified random sampling, and five-fold cross-validation was applied for parameter optimization and overfitting control. The RF–XGBoost (R 2 = 0.86) and RF–SVR (R 2 = 0.85) models outperformed the individual RF and SVR models (R 2 < 0.7). The proposed hybrid approach, optimized through features, and advanced spectral preprocessing demonstrate a robust and scalable framework for rapid prediction of SOC and sustainable soil monitoring.
Suggested Citation
Marlon Jose Yacomelo Hernández & William Ipanaqué Alama & Andrea C. Montenegro & Oscar de Jesús Córdoba & Darío Castañeda Sanchez & Cesar Vargas García & Elias Flórez Cordero & Jim Castillo Quezada & , 2026.
"Application of Vis–NIR Spectroscopy and Machine Learning for Assessing Soil Organic Carbon in the Sierra Nevada de Santa Marta, Colombia,"
Sustainability, MDPI, vol. 18(1), pages 1-20, January.
Handle:
RePEc:gam:jsusta:v:18:y:2026:i:1:p:513-:d:1832958
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