EGU26-433, updated on 13 Mar 2026
https://doi.org/10.5194/egusphere-egu26-433
EGU General Assembly 2026
© Author(s) 2026. This work is distributed under
the Creative Commons Attribution 4.0 License.
Poster | Thursday, 07 May, 10:45–12:30 (CEST), Display time Thursday, 07 May, 08:30–12:30
 
Hall X3, X3.137
MIRS and XRF Data Fusion for Improving Soil Fertility Attributes Prediction
João Lopes1,2, Magdeline Vlasimsky3, Alessandro Migliori2, Gerd Dercon3, Kalliopi Kanaki2, Fábio Melquiades1, and Avacir Andrello1
João Lopes et al.
  • 1Applied Nuclear Physics Laboratory, Physics Department, Londrina State University, Londrina, Brazil
  • 2Nuclear Science and Instrumentation Laboratory, Physics Section, Division of Physical and Chemical Sciences, Department of Nuclear Sciences and Applications, International Atomic Energy Agency, Seibersdorf, Austria
  • 3Soil and Water Management and Crop Nutrition Laboratory, Joint FAO/IAEA Centre of Nuclear Techniques in Food and Agriculture, Seibersdorf, Austria
The evaluation of soil samples using spectral techniques provides a sustainable approach to soil health assessment, reducing reliance on traditional, waste-producing analytical methods. Over the past few decades, spectroscopic and spectrometric techniques have gained prominence in soil analysis due to their non-destructive nature. X-ray fluorescence (XRF) and mid-infrared spectroscopy (MIRS) are particularly valuable, as they provide complementary information on the elemental and molecular composition of soils, respectively. Both have been successfully combined with machine learning algorithms to model and predict soil fertility parameters as alternatives to conventional wet chemistry. This study explores the potential of data fusion between XRF and MIRS measurements to enhance soil fertility prediction accuracy. A total of 160 soil samples were analyzed using a Panalytical Epsilon 5 EDXRF spectrometer, employing four different secondary targets, and a Bruker Alpha II Fourier-transform mid-infrared spectrometer. Three machine learning models were trained on individual and fused datasets: Partial Least Squares Regression (PLSR), Support Vector Machine (SVM), and Random Forest Regression (RF). The regression models built upon the fused data yielded increased performance for organic Carbon (OC), exchangeable Calcium (exCa), and exchangeable Potassium (exK). For OC, the RF model yielded the best performance, with the fused approach achieving a 5% reduction in RMSE and a 7% increase in RPD relative to standalone XRF. For exCa, RF was again the top-performing algorithm under fusion, providing a 25% reduction in RMSE and a 51% increase in RPD. For exK, the best results were obtained with PLS, which delivered a 16% reduction in RMSE and a 27% increase in RPD. These results demonstrate that integrating complementary spectral information from XRF and MIRS can enhance the prediction of key soil fertility attributes, offering a reliable and sustainable alternative to conventional chemical analyses. Beyond improving model accuracy, the proposed fusion framework highlights the potential of combining multi-sensor data to expand the applicability of spectral techniques for large-scale, rapid soil fertility assessment.

How to cite: Lopes, J., Vlasimsky, M., Migliori, A., Dercon, G., Kanaki, K., Melquiades, F., and Andrello, A.: MIRS and XRF Data Fusion for Improving Soil Fertility Attributes Prediction, EGU General Assembly 2026, Vienna, Austria, 3–8 May 2026, EGU26-433, https://doi.org/10.5194/egusphere-egu26-433, 2026.