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Complex-valued physics-informed neural networks for sound field estimation

Complex-valued physics-informed neural networks for sound field estimation
Complex-valued physics-informed neural networks for sound field estimation
Paul, Vlad-Stefan
3f46807b-cda2-4818-ba70-71bfd26a1a92
Hahn, Nara
9c5cb8ff-b351-40ff-974b-9635a790ec16
Nelson, Philip
5c6f5cc9-ea52-4fe2-9edf-05d696b0c1a9
Paul, Vlad-Stefan
3f46807b-cda2-4818-ba70-71bfd26a1a92
Hahn, Nara
9c5cb8ff-b351-40ff-974b-9635a790ec16
Nelson, Philip
5c6f5cc9-ea52-4fe2-9edf-05d696b0c1a9

Paul, Vlad-Stefan, Hahn, Nara and Nelson, Philip (2025) Complex-valued physics-informed neural networks for sound field estimation. The AES International Conference on Artificial Intelligence and Machine Learning for Audio (AIMLA 2025), Queen Mary University of London, United Kingdom. 08 - 10 Sep 2025.

Record type: Conference or Workshop Item (Paper)

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More information

Published date: 8 September 2025
Venue - Dates: The AES International Conference on Artificial Intelligence and Machine Learning for Audio (AIMLA 2025), Queen Mary University of London, United Kingdom, 2025-09-08 - 2025-09-10

Identifiers

Local EPrints ID: 509254
URI: http://eprints.soton.ac.uk/id/eprint/509254
PURE UUID: dc056eea-e08a-4e35-901b-37ccdfa82cba
ORCID for Vlad-Stefan Paul: ORCID iD orcid.org/0000-0002-5562-6102
ORCID for Nara Hahn: ORCID iD orcid.org/0000-0003-3564-5864
ORCID for Philip Nelson: ORCID iD orcid.org/0000-0002-9563-3235

Catalogue record

Date deposited: 16 Feb 2026 17:43
Last modified: 17 Feb 2026 03:09

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Contributors

Author: Vlad-Stefan Paul ORCID iD
Author: Nara Hahn ORCID iD
Author: Philip Nelson ORCID iD

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