Applying Machine Learning to Study Fluid Mechanics

10/05/2021
by   Steven L. Brunton, et al.
46

This paper provides a short overview of how to use machine learning to build data-driven models in fluid mechanics. The process of machine learning is broken down into five stages: (1) formulating a problem to model, (2) collecting and curating training data to inform the model, (3) choosing an architecture with which to represent the model, (4) designing a loss function to assess the performance of the model, and (5) selecting and implementing an optimization algorithm to train the model. At each stage, we discuss how prior physical knowledge may be embedding into the process, with specific examples from the field of fluid mechanics.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/27/2019

Machine Learning for Fluid Mechanics

The field of fluid mechanics is rapidly advancing, driven by unprecedent...
research
08/06/2018

The Fluid Mechanics of Liquid Democracy

Liquid democracy is the principle of making collective decisions by lett...
research
03/28/2023

The transformative potential of machine learning for experiments in fluid mechanics

The field of machine learning has rapidly advanced the state of the art ...
research
08/15/2022

Prospects of federated machine learning in fluid dynamics

Physics-based models have been mainstream in fluid dynamics for developi...
research
05/24/2023

Learning Lagrangian Fluid Mechanics with E(3)-Equivariant Graph Neural Networks

We contribute to the vastly growing field of machine learning for engine...
research
10/10/2022

Scientific Machine Learning for Modeling and Simulating Complex Fluids

The formulation of rheological constitutive equations – models that rela...
research
06/27/2023

CrunchGPT: A chatGPT assisted framework for scientific machine learning

Scientific Machine Learning (SciML) has advanced recently across many di...

Please sign up or login with your details

Forgot password? Click here to reset