异质动态神经算子:从数字图像相关测量中发现生物组织本构律和微观结构。

IF 1.4 Q2 MATHEMATICS, APPLIED
Siavash Jafarzadeh, Stewart Silling, Lu Zhang, Colton Ross, Chung-Hao Lee, S M Rakibur Rahman, Shuodao Wang, Yue Yu
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引用次数: 0

摘要

人体组织是高度组织化的结构,其特定的胶原纤维排列各不相同。这种非均质性的影响对组织功能起着重要作用,因此从实验测量中发现和理解这种纤维取向的分布是至关重要的,例如数字图像相关数据。为此,我们引入了异质动态神经算子(HeteroPNO)方法,用于数据驱动的非均质各向异性材料本构建模。目标是学习非局部本构律和材料微观结构,以非均质纤维取向场的形式,从加载场-位移场测量。为此,我们提出了一种两阶段学习方法。首先,我们以基于神经网络的核函数和非局部键力的形式学习齐次本构律,以从数据中捕获复杂的均匀材料响应。然后,在第二阶段,我们重新初始化学习到的键力和核函数,并将它们与每个材料点的纤维取向场一起训练。由于基于状态的动态骨架,我们的材料模型是客观的,并且保证了线动量和角动量的平衡。此外,核函数和键力分别捕获了异质性和非线性本构关系的影响,从而实现了物理可解释性。因此,我们的HeteroPNO结构可以学习具有各向异性异质响应的生物组织在大变形状态下的本构模型。这种组织的各向异性和异质性源于具有未知自然取向的胶原纤维,导致位置依赖的各向异性。为了证明我们的方法的适用性,我们将非均质PNO应用于从数字图像校正(DIC)数据中学习材料模型和纤维取向场,这些数据包含组织上的平面位移场和双轴测试中的反作用力。我们发现学习到的光纤结构与从偏振空间频域成像观察到的一致。此外,该框架能够为新的和未见过的加载实例提供位移和应力场预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HETEROGENEOUS PERIDYNAMIC NEURAL OPERATORS: DISCOVER BIOTISSUE CONSTITUTIVE LAW AND MICROSTRUCTURE FROM DIGITAL IMAGE CORRELATION MEASUREMENTS.

Human tissues are highly organized structures with specific collagen fiber arrangements varying from point to point. The effects of such heterogeneity play an important role for tissue function, and hence it is of critical to discover and understand the distribution of such fiber orientations from experimental measurements, such as the digital image correlation data. To this end, we introduce the heterogeneous peridynamic neural operator (HeteroPNO) approach, for data-driven constitutive modeling of heterogeneous anisotropic materials. The goal is to learn both a nonlocal constitutive law together with the material microstructure, in the form of a heterogeneous fiber orientation field, from loading field-displacement field measurements. To this end, we propose a two-phase learning approach. Firstly, we learn a homogeneous constitutive law in the form of a neural network-based kernel function and a nonlocal bond force, to capture complex homogeneous material responses from data. Then, in the second phase we reinitialize the learnt bond force and the kernel function, and training them together with a fiber orientation field for each material point. Owing to the state-based peridynamic skeleton, our HeteroPNO-learned material models are objective and have the balance of linear and angular momentum guaranteed. Moreover, the effects from heterogeneity and nonlinear constitutive relationship are captured by the kernel function and the bond force respectively, enabling physical interpretability. As a result, our HeteroPNO architecture can learn a constitutive model for a biological tissue with anisotropic heterogeneous response undergoing large deformation regime. The anisotropy and heterogeneity of this tissue stems from collagen fibers with unknown natural orientation, resulting in a location-dependent anisotropy. To demonstrate the applicability of our approach, we apply the heterogeneous PNO in learning the material model and fiber orientation field from digital image correction (DIC) data containing the planar displacement field on the tissue and the reaction forces in a biaxial testing. We find the learnt fiber architecture consistent with observations from polarized spatial frequency domain imaging. Moreover, the framework is capable to provide displacement and stress field predictions for new and unseen loading instances.

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