论文标题

通过状态和梯度协方差的平衡截断,非线性系统的模型降低

Model Reduction for Nonlinear Systems by Balanced Truncation of State and Gradient Covariance

论文作者

Otto, Samuel E., Padovan, Alberto, Rowley, Clarence W.

论文摘要

数据驱动的减少阶模型通常无法对高维非线性动力学系统进行准确的预测,这些动力系统沿坐标敏感,因为这些坐标通常经常被截断,例如,通过适当的正交分解,核心主成分分析和自动核对器。这种系统在剪切为主的流体流中经常遇到,在剪切主导的流体流中,非正常性在障碍的生长中起着重要作用。为了解决这些问题,我们采用来自主动子空间的想法来查找坐标的低维系统,以减少模型,以平衡伴随的信息,以了解该系统的敏感性与沿轨迹沿轨迹的状态方差的敏感性。所得的方法是使用伴随快照(Cobras)称为协方差平衡降低,类似于与状态和基于状态和伴随的梯度协方差矩阵取代Gramians并遵守相同的关键转换定律的平衡截断。在这里,提取的坐标与可用于构建彼得罗夫 - 盖尔金还原模型的斜射投影相关。我们提供了一种有效的基于快照的计算方法,类似于平衡的正交分解。这也导致观察到,可以单独依靠状态和梯度样品的内部产品来计算降低的坐标,从而使我们能够通过用核函数替换内部产品来找到丰富的非线性坐标。在这些坐标中,可以使用回归来学习减少的模型。我们演示了这些技术,并与简单但具有挑战性的三维系统和具有$ 10^5 $状态变量的非线性轴对称喷气流仿真进行比较。

Data-driven reduced-order models often fail to make accurate forecasts of high-dimensional nonlinear dynamical systems that are sensitive along coordinates with low-variance because such coordinates are often truncated, e.g., by proper orthogonal decomposition, kernel principal component analysis, and autoencoders. Such systems are encountered frequently in shear-dominated fluid flows where non-normality plays a significant role in the growth of disturbances. In order to address these issues, we employ ideas from active subspaces to find low-dimensional systems of coordinates for model reduction that balance adjoint-based information about the system's sensitivity with the variance of states along trajectories. The resulting method, which we refer to as covariance balancing reduction using adjoint snapshots (CoBRAS), is analogous to balanced truncation with state and adjoint-based gradient covariance matrices replacing the system Gramians and obeying the same key transformation laws. Here, the extracted coordinates are associated with an oblique projection that can be used to construct Petrov-Galerkin reduced-order models. We provide an efficient snapshot-based computational method analogous to balanced proper orthogonal decomposition. This also leads to the observation that the reduced coordinates can be computed relying on inner products of state and gradient samples alone, allowing us to find rich nonlinear coordinates by replacing the inner product with a kernel function. In these coordinates, reduced-order models can be learned using regression. We demonstrate these techniques and compare to a variety of other methods on a simple, yet challenging three-dimensional system and a nonlinear axisymmetric jet flow simulation with $10^5$ state variables.

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