论文标题

基于L1的稳态和时间依赖性非线性方程的搭配和超减少降低

L1-based reduced over collocation and hyper reduction for steady state and time-dependent nonlinear equations

论文作者

Chen, Yanlai, Ji, Lijie, Narayan, Akil, Xu, Zhenli

论文摘要

在例如优化或交互式应用程序必须设计高效且同样准确的替代模型。减少基础方法(RBM)作为一种选择。由数学上严格的误差估计器启用,RBM构建了参数诱导的高保真解决方案歧管的低维子空间,从中计算了近似解决方案。它可以通过利用离线在线分解程序的几个大小订单来提高效率。但是,这种分解通常是通过经验插值法(EIM)当PDE是非线性或其参数依赖性非借金时的,要么实施具有挑战性,要么严重降低在线效率。 在本文中,我们扩大并扩展了EIM方法作为直接求解器,而不是助手,以求解降低水平的非线性PPDE。所得的方法(称为减少过度交流方法(ROC))稳定,能够避免EIM传统应用固有的效率降低。该方案的两种关键成分是在降低解决方案空间的尺寸和有效的基于L1-norm的误差指示器的策略选择参数值以构建减少的解决方案空间的战略选择。这两种成分共同使拟议的L1-ROC方案均脱机和在线效率。一个独特的特征是,在离线和在线阶段中,都规避了利用EIM解决非线性和非承包问题的替代RBM方法中出现的效率降解。对时间依赖性和稳态非线性问题的不同家族的数值测试表明,L1-ROC的效率和准确性及其出色的稳定性性能。

The task of repeatedly solving parametrized partial differential equations (pPDEs) in, e.g. optimization or interactive applications, makes it imperative to design highly efficient and equally accurate surrogate models. The reduced basis method (RBM) presents as such an option. Enabled by a mathematically rigorous error estimator, RBM constructs a low-dimensional subspace of the parameter-induced high fidelity solution manifold from which an approximate solution is computed. It can improve efficiency by several orders of magnitudes leveraging an offline-online decomposition procedure. However, this decomposition, usually through the empirical interpolation method (EIM) when the PDE is nonlinear or its parameter dependence nonaffine, is either challenging to implement, or severely degrades online efficiency. In this paper, we augment and extend the EIM approach as a direct solver, as opposed to an assistant, for solving nonlinear pPDEs on the reduced level. The resulting method, called Reduced Over-Collocation method (ROC), is stable and capable of avoiding the efficiency degradation inherent to a traditional application of EIM. Two critical ingredients of the scheme are collocation at about twice as many locations as the dimension of the reduced solution space, and an efficient L1-norm-based error indicator for the strategic selection of the parameter values to build the reduced solution space. Together, these two ingredients render the proposed L1-ROC scheme both offline- and online-efficient. A distinctive feature is that the efficiency degradation appearing in alternative RBM approaches that utilize EIM for nonlinear and nonaffine problems is circumvented, both in the offline and online stages. Numerical tests on different families of time-dependent and steady-state nonlinear problems demonstrate the high efficiency and accuracy of L1-ROC and its superior stability performance.

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