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Deep Equilibrium Based Neural Operators for Steady-State PDEs

Publication ,  Conference
Marwah, T; Pokle, A; Kolter, JZ; Lipton, ZC; Lu, J; Risteski, A
Published in: Advances in Neural Information Processing Systems
January 1, 2023

Data-driven machine learning approaches are being increasingly used to solve partial differential equations (PDEs). They have shown particularly striking successes when training an operator, which takes as input a PDE in some family, and outputs its solution. However, the architectural design space, especially given structural knowledge of the PDE family of interest, is still poorly understood. We seek to remedy this gap by studying the benefits of weight-tied neural network architectures for steady-state PDEs. To achieve this, we first demonstrate that the solution of most steady-state PDEs can be expressed as a fixed point of a non-linear operator. Motivated by this observation, we propose FNO-DEQ, a deep equilibrium variant of the FNO architecture that directly solves for the solution of a steady-state PDE as the infinite-depth fixed point of an implicit operator layer using a black-box root solver and differentiates analytically through this fixed point resulting in O(1) training memory. Our experiments indicate that FNO-DEQ-based architectures outperform FNO-based baselines with 4× the number of parameters in predicting the solution to steady-state PDEs such as Darcy Flow and steady-state incompressible Navier-Stokes. Finally, we show FNO-DEQ is more robust when trained with datasets with more noisy observations than the FNO-based baselines, demonstrating the benefits of using appropriate inductive biases in architectural design for different neural network based PDE solvers. Further, we show a universal approximation result that demonstrates that FNO-DEQ can approximate the solution to any steady-state PDE that can be written as a fixed point equation.

Duke Scholars

Published In

Advances in Neural Information Processing Systems

ISSN

1049-5258

Publication Date

January 1, 2023

Volume

36

Related Subject Headings

  • 4611 Machine learning
  • 1702 Cognitive Sciences
  • 1701 Psychology
 

Citation

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MLA
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Marwah, T., Pokle, A., Kolter, J. Z., Lipton, Z. C., Lu, J., & Risteski, A. (2023). Deep Equilibrium Based Neural Operators for Steady-State PDEs. In Advances in Neural Information Processing Systems (Vol. 36).
Marwah, T., A. Pokle, J. Z. Kolter, Z. C. Lipton, J. Lu, and A. Risteski. “Deep Equilibrium Based Neural Operators for Steady-State PDEs.” In Advances in Neural Information Processing Systems, Vol. 36, 2023.
Marwah T, Pokle A, Kolter JZ, Lipton ZC, Lu J, Risteski A. Deep Equilibrium Based Neural Operators for Steady-State PDEs. In: Advances in Neural Information Processing Systems. 2023.
Marwah, T., et al. “Deep Equilibrium Based Neural Operators for Steady-State PDEs.” Advances in Neural Information Processing Systems, vol. 36, 2023.
Marwah T, Pokle A, Kolter JZ, Lipton ZC, Lu J, Risteski A. Deep Equilibrium Based Neural Operators for Steady-State PDEs. Advances in Neural Information Processing Systems. 2023.

Published In

Advances in Neural Information Processing Systems

ISSN

1049-5258

Publication Date

January 1, 2023

Volume

36

Related Subject Headings

  • 4611 Machine learning
  • 1702 Cognitive Sciences
  • 1701 Psychology