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Koopman-Based Approach to Nonintrusive Projection-Based Reduced-Order Modeling with Black-Box High-Fidelity Models

机译:黑盒高保真模型的基于Koopman的基于非侵入式投影的降阶建模方法

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This paper presents a methodology that enables projection-based model reduction for black-box high-fidelity models governing nonlinear static parametric systems. The methodology specifically addresses the situation in which the high-fidelity model may be a black box, but there is knowledge of the governing equations in continuous partial differential equation (PDE) form. Drawing from the Koopman theory, it first obtains an underdetermined linear representation of the governing equations in terms of a set of observables. Then, the linear operator is extracted by a direct discretization of the linear differential terms using a suitable method, such as the finite volume method. By applying the snapshots of the observables to the discrete linear operator, a right-hand-side vector is obtained, providing the necessary system matrices for the projection step, which is done via proper orthogonal decomposition. The underdetermined linear system is closed with a set of nonlinear algebraic equations that act as constraints, whose computation is efficiently handled via the discrete empirical interpolation method. An offline database of reduced-order models (ROMs) corresponding to each parameter snapshot is generated, which are then interpolated online to predict the state for new parameter instances. The resulting ROM is posed and solved as a nonlinear constrained optimization problem. The method is tested on a canonical PDE, followed by the 2-D compressible Euler equations governing the flow past an airfoil, under both the subsonic and transonic regimes. It is demonstrated that the ROM predicts both the state and outputs within 5% of the full-order model given adequate snapshots and the computational speedup is up to two to three orders of magnitude.
机译:本文提出了一种方法,该方法可以对基于非线性静态参数系统的黑盒高保真模型进行基于投影的模型简化。该方法论专门解决了高保真模型可能是黑匣子的情况,但是知道了连续偏微分方程(PDE)形式的控制方程。从库普曼理论出发,它首先根据一组可观测量获得了控制方程的欠定线性表示。然后,使用合适的方法(例如有限体积方法)通过线性微分项的直接离散化来提取线性算子。通过将可观测对象的快照应用于离散线性算子,可以获得右侧矢量,从而为投影步骤提供了必要的系统矩阵,这是通过适当的正交分解完成的。欠定线性系统由作为约束的一组非线性代数方程式封闭,其计算可通过离散经验插值方法有效地处理。生成与每个参数快照相对应的降序模型(ROM)的脱机数据库,然后对其进行在线插值以预测新参数实例的状态。生成的ROM被提出并作为非线性约束优化问题解决。该方法在规范的PDE上进行了测试,然后在亚音速和跨音速两种情况下,对控制通过机翼的流动进行二维压缩的Euler方程进行了测试。事实证明,如果有足够的快照,则ROM可以预测状态和输出,且不超过全阶模型的5%,并且计算速度最多可以提高2到3个数量级。

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