Revealing design archetypes and flexibility in e-molecule import pathways using Modeling to Generate Alternatives and interpretable machine learning
By: Mahdi Kchaou, Francesco Contino, Diederik Coppitters
Given the central role of green e-molecule imports in the European energy transition, many studies optimize import pathways and identify a single cost-optimal solution. However, cost optimality is fragile, as real-world implementation depends on regulatory, spatial, and stakeholder constraints that are difficult to represent in optimization models and can render cost-optimal designs infeasible. To address this limitation, we generate a diverse set of near-cost-optimal alternatives within an acceptable cost margin using Modeling to Generate Alternatives, accounting for unmodeled uncertainties. Interpretable machine learning is then applied to extract insights from the resulting solution space. The approach is applied to hydrogen import pathways considering hydrogen, ammonia, methane, and methanol as carriers. Results reveal a broad near-optimal space with great flexibility: solar, wind, and storage are not strictly required to remain within 10% of the cost optimum. Wind constraints favor solar-storage methanol pathways, while limited storage favors wind-based ammonia or methane pathways.
Similar Papers
Follow the MEP: Scalable Neural Representations for Minimum-Energy Path Discovery in Molecular Systems
Chemical Physics
Finds how molecules change shape much faster.
Modelling hydrogen integration in energy system models: Best practices for policy insights
Physics and Society
Helps plan how to use hydrogen for energy.
A Machine Learning-Fueled Modelfluid for Flowsheet Optimization
Computational Engineering, Finance, and Science
Helps design better chemical factories using smart predictions.