利用带内部变量的深度物理引导神经网络预测和解释非线性材料响应

IF 1.7 4区 工程技术 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY Mathematics and Mechanics of Solids Pub Date : 2024-07-26 DOI:10.1177/10812865241257850
Jacobo Ayensa-Jiménez, Javier Orera-Echeverría, Manuel Doblare
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引用次数: 0

摘要

非线性材料通常难以用经典状态模型理论来建模,因为它们的物理和数学描述非常复杂,有时甚至不准确,或者我们根本不知道如何用外部变量和内部变量之间的关系来描述这类材料。在许多学科中,神经网络方法已成为识别非常复杂和非线性相关性的强大工具。在这项工作中,我们利用最近开发的具有内部变量的物理引导神经网络(PGNNIVs)概念,采用无模型方法,仅使用测得的力-位移数据进行训练,从而发现构成规律。PGNNIVs 特别利用问题的物理特性,对特定的隐藏层实施约束,并能在没有内部变量数据的情况下进行预测。我们证明了 PGNNIVs 能够预测未见加载情况下的内部和外部变量,无论考虑的材料性质如何(线性、硬化或软化行为以及超弹性),从而揭示材料的构成规律,进而完全解释其性质,赋予该方法一定的解释性,使其有别于传统的黑箱方法。
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Predicting and explaining nonlinear material response using deep physically guided neural networks with internal variables
Nonlinear materials are often difficult to model with classical state model theory because they have a complex and sometimes inaccurate physical and mathematical description, or we simply do not know how to describe such materials in terms of relations between external and internal variables. In many disciplines, neural network methods have emerged as powerful tools to identify very complex and nonlinear correlations. In this work, we use the very recently developed concept of physically guided neural networks with internal variables (PGNNIVs) to discover constitutive laws using a model-free approach and training solely with measured force–displacement data. PGNNIVs make a particular use of the physics of the problem to enforce constraints on specific hidden layers and are able to make predictions without internal variable data. We demonstrate that PGNNIVs are capable of predicting both internal and external variables under unseen loading scenarios, regardless of the nature of the material considered (linear, with hardening or softening behavior and hyperelastic), unravelling the constitutive law of the material hence explaining its nature altogether, endowing the method with some explanatory character that distances it from the traditional black box approach.
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来源期刊
Mathematics and Mechanics of Solids
Mathematics and Mechanics of Solids 工程技术-材料科学:综合
CiteScore
4.80
自引率
19.20%
发文量
159
审稿时长
1 months
期刊介绍: Mathematics and Mechanics of Solids is an international peer-reviewed journal that publishes the highest quality original innovative research in solid mechanics and materials science. The central aim of MMS is to publish original, well-written and self-contained research that elucidates the mechanical behaviour of solids with particular emphasis on mathematical principles. This journal is a member of the Committee on Publication Ethics (COPE).
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