Physic Informed Machine Learning
Physics-informed machine learning (PIML) integrates physical laws and principles into machine learning models to improve prediction accuracy, robustness, and interpretability, particularly when data is scarce or noisy. Current research focuses on applying PIML to various problems using diverse architectures, including neural networks (e.g., Physics-Informed Neural Networks, DeepONets), Gaussian processes, and state-space models, often tailored to specific applications like dynamical systems modeling and solving partial differential equations. This hybrid approach offers significant advantages over purely data-driven or purely physics-based methods, impacting fields ranging from engineering and materials science to environmental modeling and healthcare through improved model accuracy and reduced computational costs.
Papers
SEEDS: Emulation of Weather Forecast Ensembles with Diffusion Models
Lizao Li, Rob Carver, Ignacio Lopez-Gomez, Fei Sha, John Anderson
Physics-Informed Machine Learning for Modeling and Control of Dynamical Systems
Truong X. Nghiem, Ján Drgoňa, Colin Jones, Zoltan Nagy, Roland Schwan, Biswadip Dey, Ankush Chakrabarty, Stefano Di Cairano, Joel A. Paulson, Andrea Carron, Melanie N. Zeilinger, Wenceslao Shaw Cortez, Draguna L. Vrabie