Data-driven selection of actuators for optimal control of airfoil separation

被引:0
|
作者
Debraj Bhattacharjee
Bjoern Klose
Gustaaf B. Jacobs
Maziar S. Hemati
机构
[1] University of Minnesota,Electrical and Computer Engineering
[2] San Diego State University,Aerospace Engineering
[3] University of Minnesota,Aerospace Engineering and Mechanics
来源
Theoretical and Computational Fluid Dynamics | 2020年 / 34卷
关键词
Flow control; Flow separation; Eigensystem realization algorithm; Dynamic mode decomposition; Lagrangian coherent structures;
D O I
暂无
中图分类号
学科分类号
摘要
We present a systematic approach for determining the optimal actuator location for separation control from input–output response data, gathered from numerical simulations or physical experiments. The Eigensystem realization algorithm is used to extract state-space descriptions from the response data associated with a candidate set of actuator locations. These system realizations are then used to determine the actuator location among the set that can drive the system output to an arbitrary value with minimal control effort. The solution of the corresponding minimum energy optimal control problem is evaluated by computing the generalized output controllability Gramian. We use the method to analyze high-fidelity numerical simulation data of the lift and separation angle responses to a pulse of localized body-force actuation from six distinct locations on the upper surface of a NACA 65(1)-412 airfoil. We find that the optimal location for controlling lift is different from the optimal location for controlling separation angle. In order to explain the physical mechanisms underlying these differences, we conduct controllability analyses of the flowfield by leveraging the dynamic mode decomposition with control algorithm. These modal analyses of flowfield response data reveal that excitation of coherent structures in the wake benefits lift control, whereas excitation of coherent structures in the shear layer benefits separation angle control.
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页码:557 / 575
页数:18
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