Litcius/Paper detail

Soil Organic Carbon Prediction and Mapping in Morocco Using PRISMA Hyperspectral Imagery and Meta-Learner Model

Yassine Bouslıhım, Abdelkrim Bouasria, Budiman Minasny, Fabio Castaldi, Andree M. Nenkam, Ali El Battay, Abdelghani Chehbouni

2025Remote Sensing15 citationsDOIOpen Access PDF

Abstract

Accurate mapping of soil organic carbon (SOC) supports sustainable land management practices and carbon accounting initiatives for mitigating climate change impacts. This study presents a novel meta-learner framework that combines multiple machine learning algorithms and spectra processing algorithms to optimize SOC prediction using the PRISMA hyperspectral satellite imagery in the Doukkala plain of Morocco. The framework employs a two-layer structure of prediction models. The first layer consists of Random Forest (RF), Support Vector Regression (SVR), and Partial Least Squares Regression (PLSR). These base models were configured using data smoothing, transformation, and spectral feature selection techniques, based on a 70/30% data split. The second layer utilizes a ridge regression model as a meta-learner to integrate predictions from the base models. Results indicated that RF and SVR performance improved primarily with feature selection, while PLSR was most influenced by data smoothing. The meta-learner approach outperformed individual base models, achieving an average relative improvement of 48.8% over single models, with an R2 of 0.65, an RMSE of 0.194%, and an RPIQ of 2.247. This study contributes to the development of methodologies for predicting and mapping soil properties using PRISMA hyperspectral data.

Topics & Concepts

Hyperspectral imagingSoil carbonEnvironmental scienceRemote sensingSoil scienceGeologySoil waterSoil Geostatistics and MappingGeochemistry and Geologic MappingSoil and Land Suitability Analysis