Generalizability of transformer-based deep learning for multidimensional turbulent flow data
湍流
物理
变压器
计算
计算流体力学
机械
声学
算法
计算机科学
电压
量子力学
作者
Dimitris Drikakis,Ioannis W. Kokkinakis,Daryl L. X. Fung,S. Michael Spottswood
出处
期刊:Physics of Fluids [American Institute of Physics] 日期:2024-02-01卷期号:36 (2)被引量:9
标识
DOI:10.1063/5.0189366
摘要
Deep learning has been going through rapid advancement and becoming useful in scientific computation, with many opportunities to be applied to various fields, including but not limited to fluid flows and fluid–structure interactions. High-resolution numerical simulations are computationally expensive, while experiments are equally demanding and encompass instrumentation constraints for obtaining flow, acoustics and structural data, particularly at high flow speeds. This paper presents a Transformer-based deep learning method for turbulent flow time series data. Turbulent signals across spatiotemporal and geometrical variations are investigated. The pressure signals are coarsely-grained, and the Transformer creates a fine-grained pressure signal. The training includes data across spatial locations of compliant panels with static deformations arising from the aeroelastic effects of shock-boundary layer interaction. Different training approaches using the Transformer were investigated. Evaluations were carried out using the predicted pressure signal and their power spectra. The Transformer's predicted signals show promising performance. The proposed method is not limited to pressure fluctuations and can be extended to other turbulent or turbulent-like signals.