Green hydrogen production via wind energy is critical for decarbonization, yet its viability is challenged by the spatiotemporal intermittency of wind resources. This study presents a novel techno-economic assessment framework that integrates a physics-based conversion model with advanced spatiotemporal forecasting architecture to analyze green hydrogen potential across six strategic locations in Scandinavia. An efficient dual-path deep learning architecture integrating patch-based transformers and convolutional neural networks is proposed to capture both long and short temporal dependencies and spatially localized weather conditions from 19-year hourly datasets (2005-2023). The proposed model achieved a mean squared error of 5.02 & times; 10(-)(4) across all locations, a 21.31% improvement against conventional CNN-LSTM hybrid architectures, with R-2 values ranging from 0.9276 to 0.9544. Coastal sites show the best prediction stability, with RMSE < 0.012 while inland locations exhibit higher uncertainty. Feature importance analysis identified wind speed as the most important predictor, with the coastal positioning significantly enhancing the prediction accuracy by 2.8-fold compared to inland locations. Monte Carlo simulation with region-specific sensitivity coefficients was conducted to assess LCOH, which showed Norway as the most economically competitive region (& euro;6.47 +/- 0.56 kg(-)(1)), and Denmark offers superior operational stability. Sensitivity analysis confirms that capacity factor (elasticity = -0.59) outweighs CAPEX as the primary driver of economic viability. Seasonal analysis showed winter production peaks in all locations and summer minimum, a critical factor for reducing downstream hydrogen storage requirements. These findings provide a quantified basis for a differentiated regional hydrogen infrastructure, prioritizing Norway for cost-effectiveness and Denmark for grid reliability.