A Review of Physics-Informed Machine Learning in Fluid Mechanics
Stanford University · SLAC National Accelerator Laboratory
Abstract
Physics-informed machine-learning (PIML) enables the integration of domain knowledge with machine learning (ML) algorithms, which results in higher data efficiency and more stable predictions. This provides opportunities for augmenting—and even replacing—high-fidelity numerical simulations of complex turbulent flows, which are often expensive due to the requirement of high temporal and spatial resolution. In this review, we (i) provide an introduction and historical perspective of ML methods, in particular neural networks (NN), (ii) examine existing PIML applications to fluid mechanics problems, especially in complex high Reynolds number flows, (iii) demonstrate the utility of PIML techniques through a case…
Citation impact
- FWCI
- 31.63
- Percentile
- 100%
- References
- 138
Authors
4Topics & keywords
- Fluid mechanics
- Perspective (graphical)
- Fidelity
- Computer science
- Reynolds number
- Statistical mechanics
- Turbulence
- Artificial intelligence