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Control of viscoelastic turbulence via wall blowing & suction optimised by reinforcement learning

ORAL

Abstract

Drag reduction in turbulent flows is critical for reducing energy consumption in pipelines and transportation systems. While polymer additives are known to attenuate turbulence in wall‑bounded flows, active control of viscoelastic turbulence remains unexplored. We perform direct numerical simulations of viscoelastic turbulent channel flow at a bulk Reynolds number of 2800 and Weissenberg number of 4, using the FENE‑P constitutive model under constant mass flux conditions. Control is implemented by sensing wall‑normal velocity fluctuations at an off‑wall detection plane and applying spatially distributed blowing/suction at the walls. Control decisions are made by a multi‑agent reinforcement learning framework in which agents share a Proximal Policy Optimization (PPO) policy, enabling coordinated, decentralized actuation with centralized training. This approach leverages localized sensing while maintaining a globally consistent strategy. The ongoing work investigates the effectiveness of such control in reducing drag, modifying near‑wall coherent structures, and uncovering possible synergies between polymer‑induced and control‑induced turbulence suppression. This work serves as a first step towards development of robust, adaptive control methods for turbulent and unsteady flows of complex fluids.

Publication: None yet; manuscript in preparation.

Presenters

  • Udit Sharma

    KTH Royal Institute of Technology

Authors

  • Udit Sharma

    KTH Royal Institute of Technology

  • Miguel Beneitez

    Department of Mechanical and Aerospace Engineering, The University of Manchester, UK

  • Lisa Wittberg

    KTH Royal Institute of Technology

  • Ricardo Vinuesa

    University of Michigan, KTH Royal Institute of Technology

  • Outi Tammisola

    FLOW and SeRC (Swedish e-Science Research Centre), Department of Engineering Mechanics, KTH Royal Institute of Technology, Stockholm, Sweden

  • Seyedshahabaddin Mirjalili

    KTH Royal Institute of Technology