模型和网格选择从mCRE函数的背景下参数识别与全场测量。

IF 3.7 2区 工程技术 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Computational Mechanics Pub Date : 2025-01-01 Epub Date: 2025-01-25 DOI:10.1007/s00466-025-02598-1
Hai Nam Nguyen, Ludovic Chamoin
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引用次数: 0

摘要

在本文中,我们提出了一个通用的确定性框架来质疑相关性,评估质量,并最终选择所使用的计算力学模型在进行参数识别时的特征(在模型类和离散化网格方面)。目标是在最好的情况下利用建模和数据,优化模型精度和计算成本,由可用实验信息的丰富性控制。利用改进的基于信息可靠性和最优允许场构造的本构关系误差概念,我们定义了严格的定量误差指标,指出了与(噪声)观测相关的已识别计算模型中包含的单个误差来源。提出了一种相关联的自适应策略,在复杂度不断增加的分层列表中,自动选择与实验数据内容一致的参数化数学模型和有限元网格。此外,该方法通过模型约简技术和特定非线性解算器的互补使用在计算上得到增强。我们在这里关注的是由全场运动测量给出的实验信息,例如通过数字图像相关技术获得的信息,尽管所提出的策略也适用于更稀疏的数据。通过对各向异性线弹性和非线性弹塑性模型的数值实验,以及综合观测和实际观测,对该方法的性能进行了分析和验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model and mesh selection from a mCRE functional in the context of parameter identification with full-field measurements.

In this paper, we propose a general deterministic framework to question the relevance, assess the quality, and ultimately choose the features (in terms of model class and discretization mesh) of the employed computational mechanics model when performing parameter identification. The goal is to exploit both modeling and data at best, with optimized model accuracy and computational cost governed by the richness of available experimental information. Using the modified Constitutive Relation Error concept based on reliability of information and the construction of optimal admissible fields, we define rigorous quantitative error indicators that point out individual sources of error contained in the identified computational model with regards to (noisy) observations. An associated adaptive strategy is then proposed to automatically select, among a hierarchical list with increasing complexity, some parameterized mathematical model and finite element mesh which are consistent with the content of experimental data. In addition, the approach is computationally enhanced by the complementary use of model reduction techniques and specific nonlinear solvers. We focus here on experimental information given by full-field kinematic measurements, e.g. obtained by means of digital image correlation techniques, even though the proposed strategy would also apply to sparser data. The performance of the approach is analyzed and validated on several numerical experiments dealing with anisotropic linear elasticity or nonlinear elastoplastic models, and using synthetic or real observations.

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来源期刊
Computational Mechanics
Computational Mechanics 物理-力学
CiteScore
7.80
自引率
12.20%
发文量
122
审稿时长
3.4 months
期刊介绍: The journal reports original research of scholarly value in computational engineering and sciences. It focuses on areas that involve and enrich the application of mechanics, mathematics and numerical methods. It covers new methods and computationally-challenging technologies. Areas covered include method development in solid, fluid mechanics and materials simulations with application to biomechanics and mechanics in medicine, multiphysics, fracture mechanics, multiscale mechanics, particle and meshfree methods. Additionally, manuscripts including simulation and method development of synthesis of material systems are encouraged. Manuscripts reporting results obtained with established methods, unless they involve challenging computations, and manuscripts that report computations using commercial software packages are not encouraged.
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