Integration of remote sensing and artificial neural networks for prediction of soil organic carbon in arid zones

Introduction: Mapping soil organic carbon (SOC) with high precision is useful for controlling soil fertility and comprehending the global carbon cycle. Low-relief locations are characterized by minimal variability in traditional soil-forming elements, such as terrain and climatic conditions, which make it difficult to reflect the spatial variation of soil properties. In the meantime, vegetation cover makes it more difficult to obtain direct knowledge about agricultural soil. Crop growth and biomass are reflected by the normalized difference vegetation index (NDVI), a significant indicator. Rather than using conventional soil-forming variables. Methods: In this study, a novel model for predicting SOC was developed using Landsat-8 Operational Land Imager (OLI) band data (Blue (B), Green (G), Red (R), and Near Infrared (NIR), NDVI data as the supporting variables, and Artificial Neural Networks (ANNs). A total of 120 surface soil samples were collected at a depth of 25 cm in the northeastern Nile Delta near Damietta City. Of these, 80% (96 samples) were randomly selected for model training, while the remaining 24 samples were used for testing and validation. Additionally, Gaussian Process Regression (GPR) models were trained to estimate SOC levels using the Matern 5/2 kernel within the Regression Learner framework. Results and discussion: The results demonstrate that both the ANN with a multilayer feedforward network and the GPR model offer effective frameworks for SOC prediction. The ANN achieved an R2 value of 0.84, while the GPR model with the Matern 5/2 kernel achieved a higher R2 value of 0.89. These findings, supported by visual and statistical evaluations through cross-validation, confirm the reliability and accuracy of the models. Conclusion: The systematic application of GPR within the Regression Learner framework provides a robust tool for SOC prediction, contributing to sustainable soil management and agricultural practices. Copyright © 2024 Gouda, Abu-hashim, Nassrallah, Khalil, Hendawy, benhasher, Shokr, Elshewy and Mohamed.

Авторы
Gouda M. , Abu-hashim M. , Nassrallah A. , Khalil M.N. , Hendawy E. , Benhasher F.F. , Shokr M.S. , Elshewy M.A. , Mohamed E.S.
Издательство
FRONTIERS MEDIA SA
Язык
Английский
Статус
Опубликовано
Номер
1448601
Том
12
Год
2024
Организации
  • 1 Soil Science Department, Faculty of Agriculture, Zigzag University, Zigzag, Egypt
  • 2 Department of Geography, College of Humanities and Social Sciences, King Saud University, Riyadh, Saudi Arabia
  • 3 National Authority for Remote Sensing and Space Sciences (NARSS), Cairo, Egypt
  • 4 Department of Geography and Environmental Sustainability, College of Humanities and Social Sciences, Princess Nourah bint Abdulrahm Riyadh, Riyadh, Saudi Arabia
  • 5 Soil and Water Department, Faculty of Agriculture, Tanta University, Tanta, Egypt
  • 6 Department of Civil Engineering, Faculty of Engineering, Al-Azhar University, Cairo, Egypt
  • 7 Department of Environmental Management, Institute of Environmental Engineering, RUDN University, Moscow, Russian Federation
Ключевые слова
drylands; landsat 8 OLI; machine learning; SOC; soil management
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