Litcius/Paper detail

Predicting soil nutrients with PRISMA hyperspectral data at the field scale: the Handan (south of Hebei Province) test cases

F Rossi, Raffaele Casa, Wenjiang Huang, Giovanni Laneve, Linyi Liu, Saham Mirzaei, Simone Pascucci, Stefano Pignatti, Yu Ren

2024Geo-spatial Information Science10 citationsDOIOpen Access PDF

Abstract

This research investigates the suitability of PRISMA and Sentinel-2 satellite imagery for retrieving topsoil properties such as Organic Matter (OM), Nitrogen (N), Phosphorus (P), Potassium (K), and pH in croplands using different Machine Learning (ML) algorithms and signal pre-treatments. Ninety-five soil samples were collected in Quzhou County, Northeast China. Satellite images captured soil reflectance data when bare soil was visible. For PRISMA data, a Linear Mixture Model (LMM) was used to separate soil and Photosynthetic Vegetation (PV) endmembers, excluding Non-Photosynthetic Vegetation (NPV) using Band Depth values at the 2100 nm absorption peak of cellulose. Sentinel-2 bare soil reflectance spectra were obtained using thresholds based on NDVI and NBR2 indices. Results showed PRISMA data provided slightly better accuracy in retrieving topsoil nutrients than Sentinel-2. While no optimal predictive algorithm was best, absorbance data proved more effective than reflectance. PRISMA results demonstrated potential for predicting soil nutrients in real scenarios.

Topics & Concepts

TopsoilEnvironmental scienceNormalized Difference Vegetation IndexVegetation (pathology)Hyperspectral imagingNutrientSoil testReflectivitySoil scienceRemote sensingSoil organic matterSoil waterAgronomyLeaf area indexGeologyChemistryOpticsPathologyOrganic chemistryMedicineBiologyPhysicsSoil Geostatistics and MappingGeochemistry and Geologic MappingRemote Sensing in Agriculture