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Can Artificial Intelligence Accelerate Fluid Mechanics Research?

Journal

FLUIDS
Volume 8, Issue 7, Pages -

Publisher

MDPI
DOI: 10.3390/fluids8070212

Keywords

artificial intelligence; machine learning; deep learning; neural networks; fluids

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The significant growth of artificial intelligence methods in machine learning and deep learning has created opportunities for the application of fluid dynamics in science, engineering, and medicine. However, developing AI methods for fluid dynamics poses challenges due to the limitations of data availability for scientific, engineering, and biomedical problems. This paper reviews the research on machine learning and deep learning for fluid dynamics, discusses algorithmic challenges, and explores potential future directions.
The significant growth of artificial intelligence (AI) methods in machine learning (ML) and deep learning (DL) has opened opportunities for fluid dynamics and its applications in science, engineering and medicine. Developing AI methods for fluid dynamics encompass different challenges than applications with massive data, such as the Internet of Things. For many scientific, engineering and biomedical problems, the data are not massive, which poses limitations and algorithmic challenges. This paper reviews ML and DL research for fluid dynamics, presents algorithmic challenges and discusses potential future directions.

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