Deep Ritz method with Fourier feature mapping: A deep learning approach for solving variational models of microstructure

Ensela Mema, Ting Wang, Jaroslaw Knap

Research output: Contribution to journalArticlepeer-review

Abstract

This paper presents a novel approach that combines the Deep Ritz Method (DRM) with Fourier feature mapping to solve minimization problems comprised of multi-well, non-convex energy potentials. These problems present computational challenges as they lack a global minimum. Through an investigation of three benchmark problems in both 1D and 2D, we observe that DRM suffers from spectral bias pathology, limiting its ability to learn solutions with high frequencies. To overcome this limitation, we modify the method by introducing Fourier feature mapping. This modification involves applying a Fourier mapping to the input layer before it passes through the hidden and output layers. Our results demonstrate that Fourier feature mapping enables DRM to generate high-frequency, multiscale solutions for the benchmark problems in both 1D and 2D, offering a promising advancement in tackling complex non-convex energy minimization problems.

Original languageEnglish
Article number102631
JournalJournal of Computational Science
Volume91
DOIs
StatePublished - Oct 2025

Keywords

  • Deep learning
  • Fourier feature mapping
  • Martensitic phase transformation
  • Nonconvex energy minimization
  • Variational problems

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