数据驱动的连续破坏力学,内置物理特性

IF 4.3 3区 工程技术 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY
Vahidullah Tac , Ellen Kuhl , Adrian Buganza Tepole
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引用次数: 0

摘要

橡胶和软组织等软性材料经常会发生大变形,并出现损伤退化,从而影响其功能。这种能量耗散机制可以在热力学一致的框架中进行描述,即连续损伤力学。最近,由于深度学习架构的高度灵活性,人们开发了数据驱动方法,以无与伦比的精度捕捉复杂的材料行为。最初的努力集中在超弹性材料上,而最近的进步则提供了满足物理约束的能力,例如默认情况下应变能量密度函数的多凸性。然而,利用深度学习架构和内置物理学建模非弹性行为仍然具有挑战性。在这里,我们展示了神经常微分方程(NODEs),我们以前用它来模拟任意超弹性材料,并自动实现多凸性,现在通过引入非弹性势能:单调屈服函数,可以扩展到以热力学一致的方式模拟能量耗散。我们根据文献中提出的不同损伤模型,展示了我们网络架构的内在灵活性。结果表明,我们的 NODE 可以从合成应力-变形历史数据中重新发现真实的损伤函数。此外,它们还能准确描述实验皮肤和皮下组织数据的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Data-driven continuum damage mechanics with built-in physics

Data-driven continuum damage mechanics with built-in physics

Soft materials such as rubbers and soft tissues often undergo large deformations and experience damage degradation that impairs their function. This energy dissipation mechanism can be described in a thermodynamically consistent framework known as continuum damage mechanics. Recently, data-driven methods have been developed to capture complex material behaviors with unmatched accuracy due to the high flexibility of deep learning architectures. Initial efforts focused on hyperelastic materials, and recent advances now offer the ability to satisfy physics constraints such as polyconvexity of the strain energy density function by default. However, modeling inelastic behavior with deep learning architectures and built-in physics has remained challenging. Here we show that neural ordinary differential equations (NODEs), which we used previously to model arbitrary hyperelastic materials with automatic polyconvexity, can be extended to model energy dissipation in a thermodynamically consistent way by introducing an inelastic potential: a monotonic yield function. We demonstrate the inherent flexibility of our network architecture in terms of different damage models proposed in the literature. Our results suggest that our NODEs re-discover the true damage function from synthetic stress-deformation history data. In addition, they can accurately characterize experimental skin and subcutaneous tissue data.

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来源期刊
Extreme Mechanics Letters
Extreme Mechanics Letters Engineering-Mechanics of Materials
CiteScore
9.20
自引率
4.30%
发文量
179
审稿时长
45 days
期刊介绍: Extreme Mechanics Letters (EML) enables rapid communication of research that highlights the role of mechanics in multi-disciplinary areas across materials science, physics, chemistry, biology, medicine and engineering. Emphasis is on the impact, depth and originality of new concepts, methods and observations at the forefront of applied sciences.
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