Deep learning architecture for sparse and noisy turbulent flow data

Filippos Sofos, Dimitris Drikakis, Ioannis William Kokkinakis

    Research output: Contribution to journalArticlepeer-review

    Abstract

    The success of deep learning models in fluid dynamics applications will depend on their ability to handle sparse and noisy data accurately. This paper concerns the development of a deep learning model for reconstructing turbulent flow images from low-resolution counterparts encompassing noise. The flow is incompressible through a symmetric, sudden expansion featuring bifurcation, instabilities, and turbulence. The deep learning model is based on convolutional neural networks, in a high-performance, lightweight architecture. The training is performed by finding correlations between high- and low-resolution two-dimensional images. The study also investigates how to remove noise from flow images after training the model with high-resolution and noisy images. In such flow images, the turbulent velocity field is represented by significant color variations. The model's peak signal-to-noise ratio is 45, one of the largest achieved for such problems. Fine-grained resolution can be achieved using sparse data at a fraction of the time required by large-eddy and direct numerical simulation methods. Considering its accuracy and lightweight architecture, the proposed model provides an alternative when repetitive experiments are complex and only a small amount of noisy data is available.

    Original languageEnglish
    Article number035155
    JournalPhysics of Fluids
    Volume36
    Issue number3
    DOIs
    Publication statusPublished - 1 Mar 2024

    Fingerprint

    Dive into the research topics of 'Deep learning architecture for sparse and noisy turbulent flow data'. Together they form a unique fingerprint.

    Cite this