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Harnessing the Power of Neural Operators with Automatically Encoded Conservation Laws

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Neural operators (NOs) have emerged as effective tools for modeling complex physical systems in scientific machine learning. In NOs, a central characteristic is to learn the governing physical laws directly from data. In contrast to other machine learning applications, partial knowledge is often known a priori about the physical system at hand whereby quantities such as mass, energy and momentum are exactly conserved. Currently, NOs have to learn these conservation laws from data and can only approximately satisfy them due to finite training data and random noise. In this work, we introduce conservation law-encoded neural operators (clawNOs), a suite of NOs that endow inference with automatic satisfaction of such conservation laws. ClawNOs are built with a divergence-free prediction of the solution field, with which the continuity equation is automatically guaranteed. As a consequence, clawNOs are compliant with the most fundamental and ubiquitous conservation laws essential for correct physical consistency. As demonstrations, we consider a wide variety of scientific applications ranging from constitutive modeling of material deformation, incompressible fluid dynamics, to atmospheric simulation. ClawNOs significantly outperform the state-of-the-art NOs in learning efficacy, especially in small-data regimes.
Full Title
Harnessing the Power of Neural Operators with Automatically Encoded Conservation Laws
Contributor(s)
Creator: Liu, Ning
Creator: Fan, Yiming
Creator: Zeng, Xianyi
Creator: Yu, Yue
Publisher
arXiv
Date Issued
2023-12-18
Language
English
Type
Genre
Form
electronic document
Media type
Creator role
Faculty
Identifier
2312.11176
Liu, . N., Fan, . Y., Zeng, . X., Kl√∂wer, . M., & Yu, . Y. (2023). Harnessing the Power of Neural Operators with Automatically Encoded Conservation Laws (1–). https://preserve.lehigh.edu/lehigh-scholarship/faculty-staff-publications/faculty-publications/harnessing-power-neural
Liu, Ning, Yiming Fan, Xianyi Zeng, Milan Kl√∂wer, and Yue Yu. 2023. “Harnessing the Power of Neural Operators With Automatically Encoded Conservation Laws”. https://preserve.lehigh.edu/lehigh-scholarship/faculty-staff-publications/faculty-publications/harnessing-power-neural.
Liu, Ning, et al. Harnessing the Power of Neural Operators With Automatically Encoded Conservation Laws. 18 Dec. 2023, https://preserve.lehigh.edu/lehigh-scholarship/faculty-staff-publications/faculty-publications/harnessing-power-neural.