Jet mixing optimization using machine learning control
Zhi Wu, Fan Dewei, Yu Zhou, Ruiying Li, Bernd R. Noack

TL;DR
This paper demonstrates that machine learning control can efficiently optimize turbulent jet mixing by identifying effective periodic forcing, outperforming traditional methods with minimal measurements and rapid learning.
Contribution
It introduces a novel application of machine learning control to optimize turbulent jet mixing, showing that simple periodic forcing can be optimal and that sensor feedback offers limited additional benefits.
Findings
MLC identified optimal periodic forcing with small duty cycle.
MLC achieved rapid learning comparable to traditional optimization.
Sensor feedback did not significantly improve mixing performance.
Abstract
We experimentally optimize mixing of a turbulent round jet using machine learning control (MLC) following Li et al (2017). The jet is manipulated with one unsteady minijet blowing in wall-normal direction close to the nozzle exit. The flow is monitored with two hotwire sensors. The first sensor is positioned on the centerline 5 jet diameters downstream of the nozzle exit, i.e. the end of the potential core, while the second is located 3 jet diameters downstream and displaced towards the shear-layer. The mixing performance is monitored with mean velocity at the first sensor. A reduction of this velocity correlates with increased entrainment near the potential core. Machine Learning Control (MLC) is employed to optimize sensor feedback, a general open-loop broadband frequency actuation and combinations of both. MLC has identified the optimal periodic forcing with a small duty cycle as the…
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