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One-shot learning for solution operators of partial differential equations

Author

Listed:
  • Anran Jiao

    (Yale University)

  • Haiyang He

    (Ansys Inc.)

  • Rishikesh Ranade

    (NVIDIA)

  • Jay Pathak

    (Ansys Inc.)

  • Lu Lu

    (Yale University
    Yale University)

Abstract

Learning and solving governing equations of a physical system, represented by partial differential equations (PDEs), from data is a central challenge in many areas of science and engineering. Traditional numerical methods can be computationally expensive for complex systems and require complete governing equations. Existing data-driven machine learning methods require large datasets to learn a surrogate solution operator, which could be impractical. Here, we propose a solution operator learning method that requires only one PDE solution, i.e., one-shot learning, along with suitable initial and boundary conditions. Leveraging the locality of derivatives, we define a local solution operator in small local domains, train it using a neural network, and use it to predict solutions of new input functions via mesh-based fixed-point iteration or meshfree neural-network based approaches. We test our method on various PDEs, complex geometries, and a practical spatial infection spread application, demonstrating its effectiveness and generalization capabilities.

Suggested Citation

  • Anran Jiao & Haiyang He & Rishikesh Ranade & Jay Pathak & Lu Lu, 2025. "One-shot learning for solution operators of partial differential equations," Nature Communications, Nature, vol. 16(1), pages 1-18, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-63076-z
    DOI: 10.1038/s41467-025-63076-z
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