中文

fPINN-DeepONet: A Physics-Informed Operator Learning Framework for Multi-term Time-fractional Mixed Diffusion-wave Equations

数值分析 2026-05-19 v1 机器学习 数值分析

摘要

In this paper, we develop a physics-informed deep operator learning framework for solving multi-term time-fractional mixed diffusion-wave equations (TFMDWEs). We begin by deriving an L2L_2 approximation, which achieves first-order accuracy for the Caputo fractional derivative of order β(1,2)\beta \in (1,2). Building upon this foundation, we propose the fPINN-DeepONet framework, a novel approach that integrates operator learning with the L2L_2 approximation to efficiently solve fractional partial differential equations (FPDEs). Our framework is successfully applied to both fixed and variable fractional-order PDEs, demonstrating the framework's versatility and broad applicability. To evaluate the performance of the proposed model, we conduct a series of numerical experiments that involve dynamically varying fractional orders in both space and time, as well as scenarios with noisy data. These results highlight the accuracy, robustness, and efficiency of the fPINN-DeepONet framework.

关键词

引用

@article{arxiv.2605.16594,
  title  = {fPINN-DeepONet: A Physics-Informed Operator Learning Framework for Multi-term Time-fractional Mixed Diffusion-wave Equations},
  author = {Binghang Lu and Zhaopeng Hao and Christian Moya and Guang Lin},
  journal= {arXiv preprint arXiv:2605.16594},
  year   = {2026}
}