2024
DOI: 10.1063/5.0214468
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Self-supervised transformers for turbulent flow time series

Dimitris Drikakis,
Ioannis William Kokkinakis,
Daryl Fung
et al.

Abstract: There has been a rapid advancement in deep learning models for diverse research fields and, more recently, in fluid dynamics. This study presents self-supervised transformers' deep learning for complex turbulent flow signals across various test problems. Self-supervision aims to leverage the ability to extract meaningful representations from sparse flow time-series data to improve the transformer model accuracy and computational efficiency. Two high-speed flow cases are considered: a supersonic compression ram… Show more

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