2024
DOI: 10.1007/s11012-024-01808-z
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Model-based deep reinforcement learning for accelerated learning from flow simulations

Andre Weiner,
Janis Geise

Abstract: In recent years, deep reinforcement learning has emerged as a technique to solve closed-loop flow control problems. Employing simulation-based environments in reinforcement learning enables a priori end-to-end optimization of the control system, provides a virtual testbed for safety-critical control applications, and allows to gain a deep understanding of the control mechanisms. While reinforcement learning has been applied successfully in a number of rather simple flow control benchmarks, a major bottleneck t… Show more

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