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BIMSA 计算数学讨论班
BIMSA 计算数学讨论班
Physics-Informed Laplace Neural Operators for Data-Efficient and Out-of-Distribution-Robust PDE Surrogate Modeling
Physics-Informed Laplace Neural Operators for Data-Efficient and Out-of-Distribution-Robust PDE Surrogate Modeling
演讲者
Minseok Choi
时间
2026年06月03日 14:00 至 15:00
地点
A3-4-312
线上
Zoom 518 868 7656
(BIMSA)
摘要
Differential equations are fundamental for modelling complex scientific and engineering processes. Operator learning offers a powerful framework for approximating the mapping from parametric inputs such as initial/boundary conditions or forcings to the corresponding solutions. However, purely data-driven operator learning methods such as the Laplace Neural Operator (LNO) or Fourier Neural Operator (FNO) often require large training datasets and may exhibit limited generalization, particularly for out-of-distribution inputs. We propose the Physics-Informed Laplace Neural Operator (PILNO), which embeds the governing physical laws directly into the learning process. This physics-informed approach reduces data dependency, enabling effective learning in small-data regimes and enhancing generalization to out-of-distribution inputs where purely data-driven LNOs often fail. By leveraging both data (when available) and physics, PILNO offers a more robust and data-efficient pathway to learning solution operators. We demonstrate advantages of PILNO across diverse parametric differential equation problems, highlighting its improved data efficiency and extrapolation performance. If time permits, we will also present practical examples of operator learning in scientific and engineering applications.