The study presents a Gradient Boosted Regression Tree (GBRT) algorithm to predict the spatial distribution of geothermal gradients across Colombia. The model leverages a diverse array of geological and geophysical datasets, including topography, subsurface characteristics, geophysical anomalies, fault data, and proximity to basement rocks, to estimate the geothermal gradient.
The model was extensively validated, achieving a normalized root mean square error (nRMSE) of 0.12 and an R-squared value of 0.52 on the test set. This performance is comparable to or better than previous studies in other regions, demonstrating the model's accuracy and robustness.
The feature importance analysis revealed that elevation, Moho depth, and basement proximity are the most influential predictors of the geothermal gradient. The model's predictions align well with known regional trends and provide valuable insights into unexplored areas, such as the Amazon basin, where the model predicts high geothermal gradients.
The resulting geothermal gradient map highlights regions with significant geothermal potential, guiding future exploration efforts and supporting the development of Colombia's renewable energy resources. The study showcases the potential of machine learning techniques to enhance geothermal exploration and contribute to the sustainable energy transition.
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