Deep learning for fluid velocity field estimation: A review

C Yu, X Bi, Y Fan - Ocean Engineering, 2023 - Elsevier
Deep learning technique, has made tremendous progress in fluid mechanics in recent
years, because of its mighty feature extraction capacity from complicated and massive fluid …

Deep learning for digital holography: a review

T Zeng, Y Zhu, EY Lam - Optics express, 2021 - opg.optica.org
Recent years have witnessed the unprecedented progress of deep learning applications in
digital holography (DH). Nevertheless, there remain huge potentials in how deep learning …

Flow over an espresso cup: inferring 3-D velocity and pressure fields from tomographic background oriented Schlieren via physics-informed neural networks

S Cai, Z Wang, F Fuest, YJ Jeon, C Gray… - Journal of Fluid …, 2021 - cambridge.org
Tomographic background oriented Schlieren (Tomo-BOS) imaging measures density or
temperature fields in three dimensions using multiple camera BOS projections, and is …

Review of machine learning for hydrodynamics, transport, and reactions in multiphase flows and reactors

LT Zhu, XZ Chen, B Ouyang, WC Yan… - Industrial & …, 2022 - ACS Publications
Artificial intelligence (AI), machine learning (ML), and data science are leading to a
promising transformative paradigm. ML, especially deep learning and physics-informed ML …

Unsupervised deep learning for super-resolution reconstruction of turbulence

H Kim, J Kim, S Won, C Lee - Journal of Fluid Mechanics, 2021 - cambridge.org
Recent attempts to use deep learning for super-resolution reconstruction of turbulent flows
have used supervised learning, which requires paired data for training. This limitation …

Uncertainty quantification for noisy inputs–outputs in physics-informed neural networks and neural operators

Z Zou, X Meng, GE Karniadakis - Computer Methods in Applied Mechanics …, 2025 - Elsevier
Uncertainty quantification (UQ) in scientific machine learning (SciML) becomes increasingly
critical as neural networks (NNs) are being widely adopted in addressing complex problems …

Deep recurrent optical flow learning for particle image velocimetry data

C Lagemann, K Lagemann, S Mukherjee… - Nature Machine …, 2021 - nature.com
A wide range of problems in applied physics and engineering involve learning physical
displacement fields from data. In this paper we propose a deep neural network-based …

Artificial intelligence velocimetry and microaneurysm-on-a-chip for three-dimensional analysis of blood flow in physiology and disease

S Cai, H Li, F Zheng, F Kong, M Dao… - Proceedings of the …, 2021 - National Acad Sciences
Understanding the mechanics of blood flow is necessary for developing insights into
mechanisms of physiology and vascular diseases in microcirculation. Given the limitations of …

When deep learning meets digital image correlation

S Boukhtache, K Abdelouahab, F Berry… - Optics and Lasers in …, 2021 - Elsevier
Abstract Convolutional Neural Networks (CNNs) constitute a class of Deep Learning models
which have been used in the recent past to resolve many problems in computer vision, in …

Reconstructing turbulent velocity and pressure fields from under-resolved noisy particle tracks using physics-informed neural networks

P Clark Di Leoni, K Agarwal, TA Zaki, C Meneveau… - Experiments in …, 2023 - Springer
Volume-resolving imaging techniques are rapidly advancing progress in experimental fluid
mechanics. However, reconstructing the full and structured Eulerian velocity and pressure …