HydroGym: A Reinforcement Learning Platform for Fluid Dynamics
Christian Lagemann, Sajeda Mokbel, Miro Gondrum, Mario R\"uttgers, Jared Callaham, Ludger Paehler, Samuel Ahnert, Nicholas Zolman, Kai Lagemann, Nikolaus Adams, Matthias Meinke, Wolfgang Schr\"oder, Jean-Christophe Loiseau, Esther Lagemann, Steven L. Brunton

TL;DR
HydroGym is a versatile reinforcement learning platform designed for fluid flow control, offering diverse benchmarks, scalable infrastructure, and efficient algorithms to facilitate research in complex fluid dynamics scenarios.
Contribution
It introduces HydroGym, a standardized, extensible RL platform with validated environments and advanced solvers for fluid flow control research.
Findings
RL agents discover robust control strategies across configurations.
Controllers trained at one condition adapt efficiently to new scenarios.
HydroGym enables scalable, transferable, and efficient fluid control research.
Abstract
Modeling and controlling fluid flows is critical for several fields of science and engineering, including transportation, energy, and medicine. Effective flow control can lead to, e.g., lift increase, drag reduction, mixing enhancement, and noise reduction. However, controlling a fluid faces several significant challenges, including high-dimensional, nonlinear, and multiscale interactions in space and time. Reinforcement learning (RL) has recently shown great success in complex domains, such as robotics and protein folding, but its application to flow control is hindered by a lack of standardized benchmark platforms and the computational demands of fluid simulations. To address these challenges, we introduce HydroGym, a solver-independent RL platform for flow control research. HydroGym integrates sophisticated flow control benchmarks, scalable runtime infrastructure, and…
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Taxonomy
TopicsModel Reduction and Neural Networks · Reinforcement Learning in Robotics · Lattice Boltzmann Simulation Studies
