2024
DOI: 10.1038/s41598-024-64020-9
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Artificial intelligence-driven assessment of salt caverns for underground hydrogen storage in Poland

Reza Derakhshani,
Leszek Lankof,
Amin GhasemiNejad
et al.

Abstract: This study explores the feasibility of utilizing bedded salt deposits as sites for underground hydrogen storage. We introduce an innovative artificial intelligence framework that applies multi-criteria decision-making and spatial data analysis to identify the most suitable locations for storing hydrogen in salt caverns. Our approach integrates a unified platform with eight distinct machine-learning algorithms—KNN, SVM, LightGBM, XGBoost, MLP, CatBoost, GBR, and MLR—creating rock salt deposit suitability maps f… Show more

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