Non-intrusive reduced-order modeling for dynamical systems with spatially localized features

IF 6.9 1区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Leonidas Gkimisis , Nicole Aretz , Marco Tezzele , Thomas Richter , Peter Benner , Karen E. Willcox
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引用次数: 0

Abstract

This work presents a non-intrusive reduced-order modeling framework for dynamical systems with spatially localized features characterized by slow singular value decay. The proposed approach builds upon two existing methodologies for reduced and full-order non-intrusive modeling, namely Operator Inference (OpInf) and sparse Full-Order Model (sFOM) inference. We decompose the domain into two complementary subdomains that exhibit fast and slow singular value decay. The dynamics of the subdomain exhibiting slow singular value decay are learned with sFOM while the dynamics with intrinsically low dimensionality on the complementary subdomain are learned with OpInf. The resulting, coupled OpInf-sFOM formulation leverages the computational efficiency of OpInf and the high resolution of sFOM, and thus enables fast non-intrusive predictions for conditions beyond those sampled in the training data set. A novel regularization technique with a closed-form solution based on the Gershgorin disk theorem is introduced to promote stable sFOM and OpInf models. We also provide a data-driven indicator for subdomain selection and ensure solution smoothness over the interface via a post-processing interpolation step. We evaluate the efficiency of the approach in terms of offline and online speedup through a quantitative, parametric computational cost analysis. We demonstrate the coupled OpInf-sFOM formulation for two test cases: a one-dimensional Burgers’ model for which accurate predictions beyond the span of the training snapshots are presented, and a two-dimensional parametric model for the Pine Island Glacier ice thickness dynamics, for which the OpInf-sFOM model achieves an average prediction error on the order of 1% with an online speedup factor of approximately 8× compared to the numerical simulation.
具有空间局域特征的动力系统非侵入式降阶建模
本文提出了一种非侵入性的降阶建模框架,用于具有缓慢奇异值衰减的空间局域特征的动力系统。提出的方法建立在两种现有的简化和全阶非侵入建模方法的基础上,即算子推理(OpInf)和稀疏全阶模型推理(sfm)。我们将该域分解为两个互补的子域,这两个子域表现出快速和缓慢的奇异值衰减。用sfm学习奇异值衰减缓慢的子域动态,用OpInf学习互补子域上固有低维数的动态。由此产生的耦合OpInf- sfm公式利用了OpInf的计算效率和sfm的高分辨率,从而能够对训练数据集中采样的条件进行快速非侵入式预测。提出了一种基于Gershgorin盘定理的正则化方法,该方法具有封闭解,可提高sfm和OpInf模型的稳定性。我们还提供了一个数据驱动的子域选择指示器,并通过后处理插值步骤确保解决方案在接口上的平滑性。我们通过定量的参数化计算成本分析来评估该方法在离线和在线加速方面的效率。我们在两个测试用例中展示了耦合的opif - som公式:一维Burgers模型,该模型提供了超出训练快照范围的准确预测,以及Pine Island冰川冰厚动态的二维参数模型,其中opif - som模型的平均预测误差约为1%,与数值模拟相比,在线加速因子约为8倍。
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来源期刊
CiteScore
12.70
自引率
15.30%
发文量
719
审稿时长
44 days
期刊介绍: Computer Methods in Applied Mechanics and Engineering stands as a cornerstone in the realm of computational science and engineering. With a history spanning over five decades, the journal has been a key platform for disseminating papers on advanced mathematical modeling and numerical solutions. Interdisciplinary in nature, these contributions encompass mechanics, mathematics, computer science, and various scientific disciplines. The journal welcomes a broad range of computational methods addressing the simulation, analysis, and design of complex physical problems, making it a vital resource for researchers in the field.
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