Mid-Infrared Spectroscopy for Soil Health Assessment.
Developing rapid, cost-effective approaches to predict soil health indicators using spectroscopy and machine learning.
Funded by the Florida Cattle Enhancement Board
Project Overview
Traditional soil health testing can be costly, labor-intensive, and time-consuming. This project explores the use of mid-infrared diffuse reflectance Fourier transform spectroscopy (mid-DRIFTS) combined with machine learning to rapidly predict soil health indicators in Florida ranchlands.
Reduce the cost and time associated with soil health assessments.
Evaluate machine learning approaches.
Improve prediction accuracy through spectral partitioning.
Why It Matters?
Traditional laboratory analyses require substantial time and resources. Spectroscopy provides a pathway to generate soil health information faster and at lower cost, potentially increasing the adoption of soil health testing among producers and land managers.
Major Findings
Improving Soil Health Predictions with Spectroscopy.
By combining mid-infrared spectroscopy with machine learning, this project demonstrates a rapid, scalable, and cost-effective approach for predicting soil health indicators in Florida’s sandy soils.

Soil Use and Management
Related Publications
Celestin, F., Deiss, L., Champiny, Ryan E., Dubeux, Jose C.B., Maltais-Landry, G., Mylavarapu, R., and Lin, Y. (2026). Predicting soil health indicators in sandy soils using diffuse reflectance mid-infrared Fourier transform spectroscopy. Soil Use and Management, 42(1), e70184. https://doi.org/10.1111/sum.70184
