基于深度强化学习的壁面有界湍流壁面再生循环管理

IF 2.4 3区 工程技术 Q3 MECHANICS
Giorgio Maria Cavallazzi, Luca Guastoni, Ricardo Vinuesa, Alfredo Pinelli
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引用次数: 0

摘要

壁面有界湍流中的壁面循环是一种复杂的湍流再生机制,目前尚未完全了解。本研究探讨了深度强化学习(DRL)在管理壁面再生周期以实现所需流动动力学方面的潜力。为了为基于DRL的流量控制创建一个强大的框架,我们将StableBaselines3 DRL库与开源的直接数值模拟(DNS)求解器can集成在一起。DRL代理与DNS环境交互,学习修改壁边界条件的策略,以优化目标,如减少表面摩擦系数或增强某些连贯结构的特征。该实现利用消息传递接口(MPI)包装器在基于python的DRL代理和DNS解析器之间进行有效通信,从而确保高性能计算体系结构上的可伸缩性。最初的实验表明,尽管受限于较短的时间间隔,但DRL能够实现与传统方法相当的减阻率。我们还提出了一种策略来增强速度条纹的一致性,假设保持直线条纹可以抑制不稳定性并进一步减少皮肤摩擦。我们的研究结果突出了DRL在流量控制应用中的前景,并强调了对更先进的控制律和目标函数的需求。未来的工作将集中在优化驱动间隔和探索新的计算架构,以扩展DRL在湍流管理中的适用性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Reinforcement Learning for the Management of the Wall Regeneration Cycle in Wall-Bounded Turbulent Flows

The wall cycle in wall-bounded turbulent flows is a complex turbulence regeneration mechanism that remains not fully understood. This study explores the potential of deep reinforcement learning (DRL) for managing the wall regeneration cycle to achieve desired flow dynamics. To create a robust framework for DRL-based flow control, we have integrated the StableBaselines3 DRL libraries with the open-source direct numerical simulation (DNS) solver CaNS. The DRL agent interacts with the DNS environment, learning policies that modify wall boundary conditions to optimise objectives such as the reduction of the skin-friction coefficient or the enhancement of certain coherent structures’ features. The implementation makes use of the message-passing-interface (MPI) wrappers for efficient communication between the Python-based DRL agent and the DNS solver, ensuring scalability on high-performance computing architectures. Initial experiments demonstrate the capability of DRL to achieve drag reduction rates comparable with those achieved via traditional methods, although limited to short time intervals. We also propose a strategy to enhance the coherence of velocity streaks, assuming that maintaining straight streaks can inhibit instability and further reduce skin-friction. Our results highlight the promise of DRL in flow-control applications and underscore the need for more advanced control laws and objective functions. Future work will focus on optimising actuation intervals and exploring new computational architectures to extend the applicability and the efficiency of DRL in turbulent flow management.

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来源期刊
Flow, Turbulence and Combustion
Flow, Turbulence and Combustion 工程技术-力学
CiteScore
5.70
自引率
8.30%
发文量
72
审稿时长
2 months
期刊介绍: Flow, Turbulence and Combustion provides a global forum for the publication of original and innovative research results that contribute to the solution of fundamental and applied problems encountered in single-phase, multi-phase and reacting flows, in both idealized and real systems. The scope of coverage encompasses topics in fluid dynamics, scalar transport, multi-physics interactions and flow control. From time to time the journal publishes Special or Theme Issues featuring invited articles. Contributions may report research that falls within the broad spectrum of analytical, computational and experimental methods. This includes research conducted in academia, industry and a variety of environmental and geophysical sectors. Turbulence, transition and associated phenomena are expected to play a significant role in the majority of studies reported, although non-turbulent flows, typical of those in micro-devices, would be regarded as falling within the scope covered. The emphasis is on originality, timeliness, quality and thematic fit, as exemplified by the title of the journal and the qualifications described above. Relevance to real-world problems and industrial applications are regarded as strengths.
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