REAL-TIME ENSEMBLE CONTROL WITH REDUCED-ORDER MODELING

被引:2
作者
Lin, Binghuai [1 ]
McLaughlin, Dennis [1 ]
机构
[1] MIT, Dept Civil & Environm Engn, Cambridge, MA 02139 USA
关键词
model order reduction; ensemble Kalman filter; real-time control; model predictive control;
D O I
10.1137/130921878
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
The control of spatially distributed systems is often complicated by significant uncertainty about system inputs, both time-varying exogenous inputs and time-invariant parameters. Spatial variations of uncertain parameters can be particularly problematic in geoscience applications, making it difficult to forecast the impact of proposed controls. One of the most effective ways to deal with uncertainties in control problems is to incorporate periodic measurements of the system's states into the control process. Stochastic control provides a convenient way to do this, by integrating uncertainty, monitoring, forecasting, and control in a consistent analytical framework. This paper describes an ensemble-based approach to closed-loop stochastic control that relies on a computationally efficient reduced-order model. The use of ensembles of uncertain parameters and states makes it possible to consider a range of probabilistic performance objectives and to derive real-time controls that explicitly account for uncertainty. The process divides naturally into forecast/update and forecast/control steps carried out recursively and initialized with a prior ensemble that describes parameter uncertainty. The performance of the ensemble controller is investigated here with a numerical experiment based on a solute transport control problem. This experiment evaluates the performance of open-and closed-loop controllers with full and reduced-order models as well as the performance obtained with a controller based on perfect knowledge of the system and the nominal performance obtained with no control. The experimental results show that a closed-loop controller that relies on measurements consistently performs better than an open-loop controller that does not. They also show that a reduced-order forecasting model based on offline simulations gives nearly the same performance as a significantly more computationally demanding full-order model. Taken together, these results confirm that reduced-order ensemble closed-loop control is a flexible and efficient option for uncertain spatially distributed systems.
引用
收藏
页码:B749 / B775
页数:27
相关论文
共 21 条
[1]   Efficient identification of uncertain parameters in a large-scale tidal model of the European continental shelf by proper orthogonal decomposition [J].
Altaf, M. U. ;
Verlaan, M. ;
Heemink, A. W. .
INTERNATIONAL JOURNAL FOR NUMERICAL METHODS IN FLUIDS, 2012, 68 (04) :422-450
[2]  
Astrom KJ., 2010, FEEDBACK SYSTEMS INT
[3]   Optimal rotary control of the cylinder wake using proper orthogonal decomposition reduced-order model [J].
Bergmann, M ;
Cordier, L ;
Brancher, JP .
PHYSICS OF FLUIDS, 2005, 17 (09) :1-21
[4]  
Bergmann M, 2007, NOTES NUMER FLUID ME, V95, P309
[5]  
Bertsekas D. P., 1976, DYNAMIC PROGRAMMING
[6]   ON OPTIMAL-CONTROL OF MULTIPHASE POROUS FLOW IN AN OIL BED [J].
BIRNOVSKII, GA .
USSR COMPUTATIONAL MATHEMATICS AND MATHEMATICAL PHYSICS, 1988, 28 (03) :156-163
[7]   NONLINEAR MODEL REDUCTION VIA DISCRETE EMPIRICAL INTERPOLATION [J].
Chaturantabut, Saifon ;
Sorensen, Danny C. .
SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2010, 32 (05) :2737-2764
[8]   A dual-weighted trust-region adaptive POD 4-D Var applied to a finite-volume shallow water equations model on the sphere [J].
Chen, X. ;
Akella, S. ;
Navon, I. M. .
INTERNATIONAL JOURNAL FOR NUMERICAL METHODS IN FLUIDS, 2012, 68 (03) :377-402
[9]  
Deutsch C.V., 2002, Geostatistical Reservoir Modeling
[10]   Sampling strategies and square root analysis schemes for the EnKF [J].
Evensen, G .
OCEAN DYNAMICS, 2004, 54 (06) :539-560