English

Convolutional Neural Network for Transition Modeling Based on Linear Stability Theory

Fluid Dynamics 2020-05-07 v1

Abstract

Transition prediction is an important aspect of aerodynamic design because of its impact on skin friction and potential coupling with flow separation characteristics. Traditionally, the modeling of transition has relied on correlation-based empirical formulas based on integral quantities such as the shape factor of the boundary layer. However, in many applications of computational fluid dynamics, the shape factor is not straightforwardly available or not well-defined. We propose using the complete velocity profile along with other quantities (e.g., frequency, Reynolds number) to predict the perturbation amplification factor. While this can be achieved with regression models based on a classical fully connected neural network, such a model can be computationally more demanding. We propose a novel convolutional neural network inspired by the underlying physics as described by the stability equations. Specifically, convolutional layers are first used to extract integral quantities from the velocity profiles, and then fully connected layers are used to map the extracted integral quantities, along with frequency and Reynolds number, to the output (amplification ratio). Numerical tests on classical boundary layers clearly demonstrate the merits of the proposed method. More importantly, we demonstrate that, for Tollmien-Schlichting instabilities in two-dimensional, low-speed boundary layers, the proposed network encodes information in the boundary layer profiles into an integral quantity that is strongly correlated to a well-known, physically defined parameter -- the shape factor.

Keywords

Cite

@article{arxiv.2005.02599,
  title  = {Convolutional Neural Network for Transition Modeling Based on Linear Stability Theory},
  author = {Muhammad I. Zafar and Heng Xiao and Meelan M. Choudhari and Fei Li and Chau-Lyan Chang and Pedro Paredes and Balaji Venkatachari},
  journal= {arXiv preprint arXiv:2005.02599},
  year   = {2020}
}

Comments

15 pages, 7 figures, submitted to Physical Review Fluids journal

R2 v1 2026-06-23T15:20:31.192Z