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Comparative study of Transformer- and LSTM-based machine learning methods for transient thermal field reconstruction

Wiera Bielajewa, Michelle Tindall, Perumal Nithiarasu Orcid Logo

Computational Thermal Sciences: An International Journal, Volume: 16, Issue: 3

Swansea University Authors: Wiera Bielajewa, Perumal Nithiarasu Orcid Logo

  • Accepted Manuscript under embargo until: 1st March 2025
Published in: Computational Thermal Sciences: An International Journal
ISSN: 1940-2503 1940-2554
Published: Begell House 2024
Online Access: Check full text

URI: https://cronfa.swan.ac.uk/Record/cronfa65266
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Keywords: machine learning, transformer, transient problem, solution reconstruction, conduction, computational heat transfer, sparse measurements
College: Faculty of Science and Engineering
Funders: This work was part-funded by the United Kingdom Atomic Energy Authority (UKAEA) and the Engineering and Physical Sciences Research Council (EPSRC) under Grant Agreement Numbers EP/W006839/1, EP/T517987/1 and EP/R012091/1. We acknowledge the support of Supercomputing Wales and AccelerateAI projects, which is partfunded by the European Regional Development Fund (ERDF) via the Welsh Government for giving us access to NVIDIA A100 40GB GPUs for batch training.
Issue: 3