Improved Greedy Identification of latent dynamics with application to fluid flows

IF 7.3 1区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY Computer Methods in Applied Mechanics and Engineering Pub Date : 2025-02-05 DOI:10.1016/j.cma.2025.117799
R. Ayoub , M. Oulghelou , P.J. Schmid
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Abstract

Model reduction is a key technology for large-scale physical systems in science and engineering, as it brings behavior expressed in many degrees of freedom to a more manageable size that subsequently allows control, optimization, and analysis with multi-query algorithms. We introduce an enhanced regression technique tailored to uncover quadratic parametric reduced-order dynamical systems from data. Our method, termed Improved Greedy Identification of Latent Dynamics (I-GILD), refines the learning phase of the original GILD approach proposed in Oulghelou et al. (2024). This refinement is achieved by reorganizing the quadratic model coefficients, allowing the minimum-residual problem to be reformulated using the Frobenius norm. Consequently, the optimality conditions lead to a generalized Sylvester equation, which is efficiently solved using the conjugate gradient method. Analysis of the convergence shows that I-GILD achieves superior convergence for quadratic model coefficients compared to GILD’s steepest gradient descent, reducing both computational complexity and iteration count. Additionally, we derive an error bound for the model predictions, offering insights into error growth in time and ensuring controlled accuracy as long as the magnitudes of initial error is small and learning residuals are well minimized. The efficacy of I-GILD is demonstrated through its application to numerical and experimental tests, specifically the flow past Ahmed body with a variable rear slant angle, and the lid-driven cylindrical cavity problem with variable Reynolds numbers, utilizing particle-image velocimetry (PIV) data. These tests confirm I-GILD’s ability to treat real-world dynamical system challenges and produce effective reduced-order models.
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潜在动力学的改进贪婪辨识及其在流体流动中的应用
模型简化是科学和工程中大规模物理系统的关键技术,因为它将许多自由度的行为表达为更易于管理的大小,从而允许使用多查询算法进行控制、优化和分析。我们介绍了一种增强的回归技术,专门用于从数据中揭示二次参数降阶动力系统。我们的方法,称为改进的潜在动力学贪婪识别(I-GILD),改进了Oulghelou等人(2024)提出的原始GILD方法的学习阶段。这种改进是通过重新组织二次模型系数来实现的,允许使用Frobenius范数重新表述最小残差问题。因此,最优性条件导致了一个广义的Sylvester方程,该方程可以用共轭梯度法有效地求解。收敛性分析表明,与GILD的最陡梯度下降相比,I-GILD在二次模型系数上具有更优的收敛性,降低了计算复杂度和迭代次数。此外,我们推导了模型预测的误差边界,提供了对误差随时间增长的见解,并确保控制精度,只要初始误差的大小很小,并且学习残差很好地最小化。I-GILD的有效性通过其在数值和实验测试中的应用得到了证明,特别是通过具有可变后斜角的艾哈迈德体的流动,以及利用粒子图像测速(PIV)数据的可变雷诺数的盖子驱动的圆柱形腔问题。这些测试证实了I-GILD处理现实世界动态系统挑战的能力,并产生了有效的降阶模型。
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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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