LOCALIZED DISCRETE EMPIRICAL INTERPOLATION METHOD

被引:142
作者
Peherstorfer, Benjamin [1 ]
Butnaru, Daniel [1 ]
Willcox, Karen [2 ]
Bungartz, Hans-Joachim [2 ]
机构
[1] Tech Univ Munich, Dept Informat, D-85748 Garching, Germany
[2] MIT, Dept Aeronaut & Astronaut, Cambridge, MA 02139 USA
关键词
discrete empirical interpolation method; clustering; proper orthogonal decomposition; model reduction; nonlinear partial differential equations; PROPER ORTHOGONAL DECOMPOSITION; NONLINEAR MODEL-REDUCTION; REDUCED BASIS METHOD; ORDER REDUCTION; SYSTEMS; POD;
D O I
10.1137/130924408
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
This paper presents a new approach to construct more efficient reduced-order models for nonlinear partial differential equations with proper orthogonal decomposition and the discrete empirical interpolation method (DEIM). Whereas DEIM projects the nonlinear term onto one global subspace, our localized discrete empirical interpolation method (LDEIM) computes several local subspaces, each tailored to a particular region of characteristic system behavior. Then, depending on the current state of the system, LDEIM selects an appropriate local subspace for the approximation of the nonlinear term. In this way, the dimensions of the local DEIM subspaces, and thus the computational costs, remain low even though the system might exhibit a wide range of behaviors as it passes through different regimes. LDEIM uses machine learning methods in the offline computational phase to discover these regions via clustering. Local DEIM approximations are then computed for each cluster. In the online computational phase, machine-learning-based classification procedures select one of these local subspaces adaptively as the computation proceeds. The classification can be achieved using either the system parameters or a low-dimensional representation of the current state of the system obtained via feature extraction. The LDEIM approach is demonstrated for a reacting flow example of an H-2-Air flame. In this example, where the system state has a strong nonlinear dependence on the parameters, the LDEIM provides speedups of two orders of magnitude over standard DEIM.
引用
收藏
页码:A168 / A192
页数:25
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