arXiv Analytics

Sign in

arXiv:2003.14358 [physics.flu-dyn]AbstractReferencesReviewsResources

Controlling Rayleigh-Bénard convection via Reinforcement Learning

Gerben Beintema, Alessandro Corbetta, Luca Biferale, Federico Toschi

Published 2020-03-31Version 1

Thermal convection is ubiquitous in nature as well as in many industrial applications. The identification of effective control strategies to, e.g., suppress or enhance the convective heat exchange under fixed external thermal gradients is an outstanding fundamental and technological issue. In this work, we explore a novel approach, based on a state-of-the-art Reinforcement Learning (RL) algorithm, which is capable of significantly reducing the heat transport in a two-dimensional Rayleigh-B\'enard system by applying small temperature fluctuations to the lower boundary of the system. By using numerical simulations, we show that our RL-based control is able to stabilize the conductive regime and bring the onset of convection up to a Rayleigh number $Ra_c \approx 3 \cdot 10^4$, whereas in the uncontrolled case it holds $Ra_{c}=1708$. Additionally, for $Ra > 3 \cdot 10^4$, our approach outperforms other state-of-the-art control algorithms reducing the heat flux by a factor of about $2.5$. In the last part of the manuscript, we address theoretical limits connected to controlling an unstable and chaotic dynamics as the one considered here. We show that controllability is hindered by observability and/or capabilities of actuating actions, which can be quantified in terms of characteristic time delays. When these delays become comparable with the Lyapunov time of the system, control becomes impossible.

Related articles: Most relevant | Search more
arXiv:1911.03529 [physics.flu-dyn] (Published 2019-11-08)
Active Cloaking in Stokes Flows via Reinforcement Learning
arXiv:1811.10880 [physics.flu-dyn] (Published 2018-11-27)
Swimming strategy of settling elongated micro-swimmers by reinforcement learning
arXiv:2309.06260 [physics.flu-dyn] (Published 2023-09-12)
Toward Discretization-Consistent Closure Schemes for Large Eddy Simulation Using Reinforcement Learning