Filter By:

Journal Check one or more journals to show results from those journals only.

Choose more journals

Article type Check one or more article types to show results from those article types only.
Subject Check one or more subjects to show results from those subjects only.
Date Choose a date option to show results from those dates only.

Custom date range

Clear all filters
Sort by:
Showing 1–2 of 2 results
Advanced filters: Author: Rishikesh Ranade Clear advanced filters
  • Learning and solving physical systems governed by partial differential equations usually require complete equations or large datasets, which can be impractical. Here, authors introduce a machine learning method that learns the system from only one solution data and generalizes to varied new inputs

    • Anran Jiao
    • Haiyang He
    • Lu Lu
    ResearchOpen Access
    Nature Communications
    Volume: 16, P: 1-18
  • Neural-network-based solvers for partial differential equations (PDEs) suffer from difficulties tackling high-frequency modes when learning complex functions, whereas for classical solvers it is more difficult to handle low-frequency modes. Zhang and colleagues propose a hybrid numerical PDE solver by combining a Deep Operator Network with traditional relaxation methods, leading to balanced convergence across the eigenmode spectrum for a wide range of PDEs.

    • Enrui Zhang
    • Adar Kahana
    • George Em Karniadakis
    Research
    Nature Machine Intelligence
    Volume: 6, P: 1303-1313