Artificial Intelligence for Green Hydrogen Yield Prediction and Site Suitability using SHAP-Based Composite Index: Focus on Oman
Obumneme Zimuzor Nwafor, Mohammed Abdul Majeed Al Hooti

TL;DR
This paper introduces an AI framework using SHAP values to predict green hydrogen yield and site suitability in Oman, effectively handling limited data and revealing key environmental factors influencing hydrogen production.
Contribution
The study develops a novel AI pipeline combining clustering, classification, and SHAP analysis for green hydrogen site assessment in data-scarce regions, with high predictive accuracy.
Findings
Water proximity, elevation, and seasonal variation are the most influential factors.
Model achieves 98% accuracy in predicting site suitability.
Provides an objective, reproducible tool for infrastructure planning.
Abstract
As nations seek sustainable alternatives to fossil fuels, green hydrogen has emerged as a promising strategic pathway toward decarbonisation, particularly in solar-rich arid regions. However, identifying optimal locations for hydrogen production requires the integration of complex environmental, atmospheric, and infrastructural factors, often compounded by limited availability of direct hydrogen yield data. This study presents a novel Artificial Intelligence (AI) framework for computing green hydrogen yield and site suitability index using mean absolute SHAP (SHapley Additive exPlanations) values. This framework consists of a multi-stage pipeline of unsupervised multi-variable clustering, supervised machine learning classifier and SHAP algorithm. The pipeline trains on an integrated meteorological, topographic and temporal dataset and the results revealed distinct spatial patterns of…
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Taxonomy
TopicsHybrid Renewable Energy Systems · Solar Radiation and Photovoltaics · Water-Energy-Food Nexus Studies
