This paper presents a novel artificial intelligence (AI) framework for identifying optimal locations for green hydrogen production. The framework uses a multi-stage pipeline consisting of unsupervised multivariate clustering, supervised machine learning classifiers, and the SHAP algorithm. The results, trained on Oman with integrated meteorological, topographic, and temporal data, show that proximity to water, elevation, and seasonal variation are the most important factors determining green hydrogen site suitability (mean absolute SHAP values are 2.470891, 2.376296, and 1.273216, respectively), and the model’s prediction accuracy reaches 98%. It provides objective and reproducible alternatives to support data-driven decision-making in countries with limited or insufficient real-world yield data.