Litcius/Paper detail

The Application of Physics-Informed Machine Learning in Multiphysics Modeling in Chemical Engineering

Zhi‐Yong Wu, Huan Wang, Chang He, Bingjian Zhang, Tao Xu, Qinglin Chen

2023Industrial & Engineering Chemistry Research91 citationsDOI

Abstract

Physics-Informed Machine Learning (PIML) is an emerging computing paradigm that offers a new approach to tackle multiphysics modeling problems prevalent in the field of chemical engineering. These problems often involve complex transport processes, nonlinear reaction kinetics, and multiphysics coupling. This Review provides a detailed account of the main contributions of PIML with a specific emphasis on modeling momentum transfer, heat transfer, mass transfer, and chemical reactions. The progress in method development (e.g., algorithm and architecture), software libraries, and specific applications (e.g., multiphysics coupling and surrogate modeling) are detailed. On this basis, future challenges highlight the importance of developing more practical solutions and strategies for PIML, including turbulence models, domain decomposition, training acceleration, surrogate modeling, hybrid modeling, and geometry module creation.

Topics & Concepts

MultiphysicsComputer sciencePhysicsFinite element methodThermodynamicsModel Reduction and Neural NetworksNuclear Engineering Thermal-HydraulicsReservoir Engineering and Simulation Methods