2024
DOI: 10.3390/fluids9090216
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Deep Reinforcement Learning for Fluid Mechanics: Control, Optimization, and Automation

Innyoung Kim,
Youngmin Jeon,
Jonghyun Chae
et al.

Abstract: A comprehensive review of recent advancements in applying deep reinforcement learning (DRL) to fluid dynamics problems is presented. Applications in flow control and shape optimization, the primary fields where DRL is currently utilized, are thoroughly examined. Moreover, the review introduces emerging research trends in automation within computational fluid dynamics, a promising field for enhancing the efficiency and reliability of numerical analysis. Emphasis is placed on strategies developed to overcome cha… Show more

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