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首页> 外文期刊>Computer Methods in Applied Mechanics and Engineering >A two-stage surrogate model for Neo-Hookean problems based on adaptive proper orthogonal decomposition and hierarchical tensor approximation
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A two-stage surrogate model for Neo-Hookean problems based on adaptive proper orthogonal decomposition and hierarchical tensor approximation

机译:基于自适应适当正交分解和分层张量近似的新联系问题的两阶段代理模型

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The evaluation of robustness and reliability of realistic structures in the presence of uncertainty is numerically costly. This motivates model order reduction techniques like the proper orthogonal decomposition (POD), which gives an approximate model on the basis of a set of precomputations of a full model. This reduces the computational time. The reduction achieved by POD is usually not sufficient in the uncertainty quantification or optimization context where a large number of evaluations has to be carried out. In this context, it is also common that only a few quantities are of interest and a further reduction is possible. The second reduction may be represented by a mapping from a possibly high-dimensional parameter space onto each quantity of interest (QoI). In general, it is difficult to construct such a mapping from an unreduced model. Hence, in this paper a two-stage surrogate model that combines both reduction approaches is introduced. This surrogate model is tailored and applied to Neo-Hookean model problems with plasticity, hardening and damage. Here, the knowledge of the model allows an adaptive selection of the POD basis on the first stage. This idea is elaborated into a generalized framework called adaptive proper orthogonal decomposition (APOD). The second stage consists of the hierarchical tensor approximation (HTA) which is easily adjusted to the accuracy and computational cost of the first stage such that the two-stage surrogate model becomes an efficient option for uncertainty quantification and optimization for Neo-Hookean problems. Additionally, with both stages at hand, the HTA is utilized for a greedy snapshot search to improve the basis of APOD and POD. This is useful if no expert knowledge is available to guide the snapshot selection in the offline phase. (C) 2020 Elsevier B.V. All rights reserved.
机译:在存在不确定性存在下的鲁棒性和鲁棒性和可靠性的评估在数量上是成本昂贵的。这激励了模型顺序减少技术,如适当的正交分解(POD),其基于一组完整模型的预先计算提供近似模型。这减少了计算时间。通过POD实现的减少通常在不确定的定量或优化上下文中通常不足以进行大量评估。在这种情况下,它还常见的是,只有少量感兴趣,并且可以进一步减少。第二减少可以由从可能的高维参数空间到每种兴趣量(QoI)的映射来表示。通常,难以从未发育的模型构造这种映射。因此,在本文中,介绍了结合两个还原方法的两级代理模型。该代理模型是量身定制的,并应用于具有可塑性,硬化和损坏的新妓女模型问题。这里,模型的知识允许在第一阶段进行自适应选择的豆荚。该想法被阐述为称为自适应适当的正交分解(Apod)的广义框架。第二阶段包括分层张量近似(HTA),其容易调整为第一阶段的准确性和计算成本,使得两级代理模型成为Neo-Hookean问题的不确定量化和优化的有效选择。另外,通过手中的两个阶段,HTA用于贪婪的快照搜索以提高Apod和Pod的基础。如果没有专业知识可用于指导离线阶段的快照选择,则这很有用。 (c)2020 Elsevier B.v.保留所有权利。

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