Closed-loop control of an experimental mixing layer using MLC

ORAL

Abstract

A novel framework for closed-loop control of turbulent flows is tested for an experimental mixing layer flow. This framework, called Machine Learning Control (MLC), provides a model-free method of searching for the best control law (see talk of B.~R.\ Noack). Here, MLC is benchmarked against classical open-loop actuation of the mixing layer. Results show that this method is capable of producing sensor-based control laws which can rival or surpass the best open-loop forcing, and be robust to changing flow conditions. Additionally, MLC can detect non-linear mechanisms present in the controlled plant, and exploit them to find a better type of actuation than the best periodic forcing. Other experimental shear-flow control studies with MLC will be presented in a talk by T.\ Duriez.

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

Authors

  • Vladimir Parezanovic

    • PPRIME, Poitiers, France
  • Laurent Cordier

    • PPRIME, Poitiers, France
    • Institute PPRIME
    • PPRIME Institute
  • Bernd R. Noack

    • PPRIME, Poitiers, France
    • Institute PPRIME
    • PPRIME Institute
  • Andreas Spohn

    • PPRIME, Poitiers, France
  • Jean-Paul Bonnet

    • PPRIME, Poitiers, France
  • Thomas Duriez

    • Universidad de Buenos Aires, Argentinia
  • Marc Segond

    • Ambrosys GmbH, Germany
  • Markus W. Abel

    • Ambrosys GmbH, Germany
  • Steven Brunton

    • University of Washington, USA
    • Universty of Washington, USA
    • University of Washington