Deep model predictive flow control with limited sensor data and online learning

被引:53
作者
Bieker, Katharina [1 ]
Peitz, Sebastian [1 ]
Brunton, Steven L. [2 ]
Kutz, J. Nathan [3 ]
Dellnitz, Michael [1 ]
机构
[1] Paderborn Univ, Chair Appl Math, Paderborn, Germany
[2] Univ Washington, Dept Mech Engn, Seattle, WA 98195 USA
[3] Univ Washington, Dept Appl Math, Seattle, WA 98195 USA
关键词
Optimal control; Model predictive control; Deep learning; Online learning; Flow control; NAVIER-STOKES; KOOPMAN OPERATOR; NEURAL-NETWORKS; REDUCTION;
D O I
10.1007/s00162-020-00520-4
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
The control of complex systems is of critical importance in many branches of science, engineering, and industry, many of which are governed by nonlinear partial differential equations. Controlling an unsteady fluid flow is particularly important, as flow control is a key enabler for technologies in energy (e.g., wind, tidal, and combustion), transportation (e.g., planes, trains, and automobiles), security (e.g., tracking airborne contamination), and health (e.g., artificial hearts and artificial respiration). However, the high-dimensional, nonlinear, and multi-scale dynamics make real-time feedback control infeasible. Fortunately, these high-dimensional systems exhibit dominant, low-dimensional patterns of activity that can be exploited for effective control in the sense that knowledge of the entire state of a system is not required. Advances in machine learning have the potential to revolutionize flow control given its ability to extract principled, low-rank feature spaces characterizing such complex systems. We present a novel deep learning model predictive control framework that exploits low-rank features of the flow in order to achieve considerable improvements to control performance. Instead of predicting the entire fluid state, we use a recurrent neural network (RNN) to accurately predict the control relevant quantities of the system, which are then embedded into an MPC framework to construct a feedback loop. In order to lower the data requirements and to improve the prediction accuracy and thus the control performance, incoming sensor data are used to update the RNN online. The results are validated using varying fluid flow examples of increasing complexity.
引用
收藏
页码:577 / 591
页数:15
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