Closed-loop turbulence control with machine learning methods

ORAL

Abstract

We propose a machine learning control strategy for arbitrary turbulent flow configurations with finite number of actuators and sensors. This method designs and optimizes closed-loop control laws automatically detecting and exploiting linear to strongly non-linear actuation mechanisms. Presented examples range from a simple analytical model to the TUCOROM mixing layer control demonstrator.

*Funding of the ANR Chair of Excellence TUCOROM, of the EC's Marie-Curie ITN program and of Ambrosys GmbH is acknowledged.

Authors

  • Bernd R. Noack

    • Institute PPRIME, France
  • Thomas Duriez

    • Institute PPRIME, France
  • Laurent Cordier

    • Institute PPRIME, France
  • Marc Segond

    • Ambrosys GmbH, Germany
  • Markus Abel

    • Ambrosys GmbH, Germany
  • Steven Brunton

    • University of Washington, USA
    • University of Washington
  • Marek Morzynski

    • Poznan University of Technology, Poland
  • Jean-Charles Laurentie

    • Institute PPRIME, France
  • Vladimir Parezanovic

    • Institute PPRIME, France
  • Jean-Paul Bonnet

    • Institute PPRIME, France