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Machine Learning in Heterogeneous Porous Materials

Authors :
D'Elia, Marta
Deng, Hang
Fraces, Cedric
Garikipati, Krishna
Graham-Brady, Lori
Howard, Amanda
Karniadakis, George
Keshavarzzadeh, Vahid
Kirby, Robert M.
Kutz, Nathan
Li, Chunhui
Liu, Xing
Lu, Hannah
Newell, Pania
O'Malley, Daniel
Prodanovic, Masa
Srinivasan, Gowri
Tartakovsky, Alexandre
Tartakovsky, Daniel M.
Tchelepi, Hamdi
Vazic, Bozo
Viswanathan, Hari
Yoon, Hongkyu
Zarzycki, Piotr
Publication Year :
2022

Abstract

The "Workshop on Machine learning in heterogeneous porous materials" brought together international scientific communities of applied mathematics, porous media, and material sciences with experts in the areas of heterogeneous materials, machine learning (ML) and applied mathematics to identify how ML can advance materials research. Within the scope of ML and materials research, the goal of the workshop was to discuss the state-of-the-art in each community, promote crosstalk and accelerate multi-disciplinary collaborative research, and identify challenges and opportunities. As the end result, four topic areas were identified: ML in predicting materials properties, and discovery and design of novel materials, ML in porous and fractured media and time-dependent phenomena, Multi-scale modeling in heterogeneous porous materials via ML, and Discovery of materials constitutive laws and new governing equations. This workshop was part of the AmeriMech Symposium series sponsored by the National Academies of Sciences, Engineering and Medicine and the U.S. National Committee on Theoretical and Applied Mechanics.<br />Comment: The workshop link is: https://amerimech.mech.utah.edu

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2202.04137
Document Type :
Working Paper