Data Driven Analysis and Modeling of Turbulent Flows
- 1 Edición - 17 de marzo de 2025
- Última edición
- Editor: Karthik Duraisamy
- Idioma: Inglés
Data-driven Analysis and Modeling of Turbulent Flows provides an integrated treatment of modern data-driven methods to describe, control, and predict turbulent flows through the… Leer más
Descripción
Descripción
Data-driven Analysis and Modeling of Turbulent Flows provides an integrated treatment of modern data-driven methods to describe, control, and predict turbulent flows through the lens of both physics and data science.
The book is organized into three parts:
The book is organized into three parts:
- Exploration of techniques for discovering coherent structures within turbulent flows, introducing advanced decomposition methods
- Methods for estimation and control using data assimilation and machine learning approaches
- Finally, novel modeling techniques that combine physical insights with machine learning
Puntos claves
Puntos claves
- Exploration of techniques for discovering coherent structures within turbulent flows, introducing advanced decomposition methods
- Methods for estimation and control using data assimilation and machine learning approaches
- Finally, novel modeling techniques that combine physical insights with machine learning
De interès para
De interès para
Students, researchers, and practitioners in fluid mechanics, though readers from related fields such as applied mathematics, computational science, and machine learning will find it also of interest.
Índice
Índice
1. Introduction to data-driven modeling
2. Modal Decomposition
3. Resolvent analysis for turbulent flows
4. Data assimilation and flow estimation
5. Data-driven control
6. Constitutive Modeling
7. Parameter estimation and uncertainty quantification
8. Machine Learning Augmented modeling
9. Symbolic regression methods
2. Modal Decomposition
3. Resolvent analysis for turbulent flows
4. Data assimilation and flow estimation
5. Data-driven control
6. Constitutive Modeling
7. Parameter estimation and uncertainty quantification
8. Machine Learning Augmented modeling
9. Symbolic regression methods
Detalles del producto
Detalles del producto
- Edición: 1
- Última edición
- Publicado: 17 de marzo de 2025
- Idioma: Inglés
Sobre el editor
Sobre el editor
KD
Karthik Duraisamy
Karthik Duraisamy is a professor of Aerospace Engineering and the director of the Michigan Institute for Computational Discovery at the University of Michigan, Ann Arbor, USA. His research interests are in data-driven and reduced order modeling, statistical inference, numerical methods, and Generative AI with application to fluid flows. He is also the founder and Chief Scientist of the Silicon Valley startup Geminus.AI which is focused on physics informed AI for industrial decision-making.
Afiliaciones y experiencia
Director, Center for Data-driven Computational Physics and the Air Force Center for Rocket Combustor Dynamics, University of Michigan, USAVer libro en ScienceDirect
Ver libro en ScienceDirect
Lee Data Driven Analysis and Modeling of Turbulent Flows en ScienceDirect