par Parente, Alessandro ;Swaminathan, Nedunchezhian
Référence iScience, 27, 4, 109349
Publication Publié, 2024-04
Référence iScience, 27, 4, 109349
Publication Publié, 2024-04
Article révisé par les pairs
Résumé : | We highlight the critical role of data in developing sustainable combustion technologies for industries requiring high-density and localized energy sources. Combustion systems are complex and difficult to predict, and high-fidelity simulations are out of reach for practical systems because of computational cost. Data-driven approaches and artificial intelligence offer promising solutions, enabling renewable synthetic fuels to meet decarbonization goals. We discuss open challenges associated with the availability and fidelity of data, physics-based numerical simulations, and machine learning, focusing on developing digital twins capable of mirroring the behavior of industrial combustion systems and continuously updating based on newly available information. |