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'On-the-fly' snapshots selection for Proper Orthogonal Decomposition with application to nonlinear dynamics

机译:“随机”快照选择,用于适当的正交分解,应用于非线性动力学

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Over the last few decades, Reduced Order Modeling (ROM) has slowly but surely inched towards widespread acceptance in computational mechanics, as well as other simulation-based fields. Projection-based Reduced Order Modeling (PROM) relies on the construction of an appropriate Reduced Basis (RB), which is typically a low-rank representation of a set of "observations" made using full-field simulations, usually obtained through truncated Singular Value Decomposition (SVD). However, SVD encounters limitations when dealing with a large number of high-dimensional observations, requiring the development of alternatives such as the incremental SVD. The key advantages of this approach are reduced computational complexity and memory requirement compared to a regular "single pass" spectral decomposition. These are achieved by only using relevant observations to enrich the low-rank representation as and when available, to avoid having to store them. In addition, the RB may be truncated 'on-the-fly' so as to reduce the size of the matrices involved as much as possible and, by doing so, avoid the quadratic scale-up in computational effort with the number of observations. In this paper, we present a new error estimator for the incremental SVD, which is shown to be an upper bound for the approximation error, and propose an algorithm to perform the incremental SVD truncation and observation selection 'on-the-fly', instead of using a prohibitively large number of frequently "hard to set" parameters. The performance of the approach is discussed on the reduced-order Finite Element (FE) model simulation of impact on a Taylor beam. (C) 2020 Elsevier B.V. All rights reserved.
机译:在过去的几十年中,减少的阶阶型建模(ROM)缓慢但肯定地朝着计算力学的广泛认可以及其他基于仿真的领域。基于投影的减少阶阶建模(PROM)依赖于适当降低的基础(RB)的结构,这通常是使用全场模拟的一组“观察”的低秩表示,通常通过截短的奇异值获得分解(SVD)。然而,在处理大量高维观测时,SVD遇到限制,需要开发诸如增量SVD的替代品。与常规“单通”光谱分解相比,这种方法的关键优点是计算复杂性和内存要求。这些是通过使用相关观察来丰富低级表示的诸如可用的低秩表示来实现的,以避免储存它们。另外,RB可以被截断'在飞行',以减小尽可能多的矩阵的大小,并且通过这样做,避免使用观察的计算工作中的二次扩展。在本文中,我们为增量SVD呈现了一个新的误差估计器,它被示为近似误差的上限,并提出了一种算法来执行增量SVD截断和观察选择'在飞行',而是使用过度大量频繁的“难以设置”参数。在泰勒梁对撞击的下降有限元(FE)模型模拟​​上讨论了该方法的性能。 (c)2020 Elsevier B.v.保留所有权利。

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