Integrated pixel-wise remote sensing and explainable machine learning for natural hydrogen exploration in southeastern part of Pricaspian Basin, Western Kazakhstan
摘要
Natural hydrogen (H2) emerges as a clean energy resource generated by different geological processes in multiple geological contexts. Current hydrogen exploration activities rely mainly on surface geochemical surveys focused on diagnostic morphological expressions. Analogous to the early stages of hydrocarbon exploration, these first-pass indicators are used to delineate prospective corridors and rank targets, thereby de-risking and guiding subsequent subsurface investigations. However, these surface expressions remain elusive due to sparse sampling and the absence of robust detection workflows. This study presents a machine learning-based remote sensing technique for pixel-wise hydrogen prospectivity mapping applied on the Atyrau region in the southeastern part of the petroliferous Pricaspian Basin, western Kazakhstan. We utilize Sentinel-2 Level-2 A imagery and extract 13 spectral bands (B1–B12, B8A), 5 spectral indices (e.g., NDVI, NDWI), and 4 texture features, forming a 22-dimensional input feature space. Four classifiers, Random Forest (RF,