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Modelling spatial distribution in the upper Blue Nile basin using multi spectral Sentinel-2 and environmental data. | LitMetric

AI Article Synopsis

  • The study focuses on mapping the spatial distribution of a species in the highlands of northern Ethiopia, highlighting its historical uses and the controversies over its environmental impact.
  • The researchers utilized Sentinel-2 data along with various machine learning algorithms (Random Forest, Support Vector Machine, Boosted Regression Trees) to create and validate a model for this purpose, using a significant data set of 419 georeferenced points.
  • Random Forest emerged as the most effective algorithm, achieving high accuracy in predictions, primarily influenced by factors like the Green Normalized Difference Vegetation Index, elevation, and proximity to roads.

Article Abstract

plantations are widespread in the highlands of northern Ethiopia. The species has been used for centuries for various purposes. However, there are controversies surrounding the species with excessive soil nutrient and water consumption. Modelling the spatial distribution of the species is fundamental to understand its ecological and hydrological effects in the region for policy inputs. Therefore, the purpose of this study is to develop a model for mapping the spatial distribution of . We used the spectral bands of Sentinel-2 data, vegetation indices, and environmental data as predictor variables and three machine learning algorithms (Random Forest, Support Vector Machine, and Boosted Regression Trees) to model the current distribution of . Eleven of the twenty-five predictor variables were filtered using a variance inflation factor (VIF). 419 in situ georeferenced data points were used for training, and validating the models. The area under the curve (AUC), kappa statistic (K), true skill statistic (TSS), Root Mean Squared Error and coefficient of determination (R) were used to validate the models' performance. The model validation metrics confirmed the highest performance of Random Forest. The prediction map of Random Forest revealed that was fairly detected in non- woody vegetation (R = 0.86, P < 0.001; RMSE = 0.31). We found that the Green Normalized Difference Vegetation Index and environmental variables, such as elevation and distance from the road, were the most important predictor variables in explaining the distribution of . Our findings demonstrate that machine learning algorithms with Sentinel-2 spectral bands and vegetation indices compounded with environmental data can effectively model the spatial distribution of .

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11470619PMC
http://dx.doi.org/10.1016/j.heliyon.2024.e38419DOI Listing

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