Learning Green's Function Efficiently Using Low-Rank Approximations

  • Kishan Wimalawarne
  • , Taiji Suzuki
  • , Sophie Langer

Research output: Working paperPreprintAcademic

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Abstract

Learning the Green's function using deep learning models enables to solve different classes of partial differential equations. A practical limitation of using deep learning for the Green's function is the repeated computationally expensive Monte-Carlo integral approximations. We propose to learn the Green's function by low-rank decomposition, which results in a novel architecture to remove redundant computations by separate learning with domain data for evaluation and Monte-Carlo samples for integral approximation. Using experiments we show that the proposed method improves computational time compared to MOD-Net while achieving comparable accuracy compared to both PINNs and MOD-Net.
Original languageEnglish
PublisherArXiv.org
DOIs
Publication statusPublished - 1 Aug 2023

Keywords

  • cs.LG
  • cs.AI
  • cs.NA
  • math.NA

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