Active Flow Control for Drag Reduction Through Multi-agent Reinforcement Learning on a Turbulent Cylinder at $$Re_D=3900$$
Pol Suárez(Barcelona Supercomputing Center), Ricardo Vinuesa(Swedish e-Science Research Centre), Francisco Alcántara-Ávila(KTH Royal Institute of Technology), Arnau Miró(Barcelona Supercomputing Center), Jean Rabault(Norwegian Meteorological Institute), O. Lehmkuhl(Barcelona Supercomputing Center), Bernat Font(Delft University of Technology)
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