一种数据驱动的方法来表征软材料的非线性弹性行为。

Yiliang Wang, J. Ghaboussi, Cameron Hoerig, M. Insana
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引用次数: 1

摘要

Autoprogressive (AutoP)方法是一种数据驱动的逆方法,利用有限元分析(FEA)和机器学习(ML)技术从测量的力和位移数据中构建本构关系。AutoP先前在类组织介质中的应用主要集中在线性弹性力学行为上,因为目标物体是无穷小压缩的。在本研究中,我们扩展了AutoP在表征目标物体承受有限压缩变形时的非线性弹性力学行为中的应用。在非线性介质先验的指导下,我们修改了AutoP生成的训练数据,以加快其学习建模变形的能力。AutoP训练使用3D物体记录的合成数据和实验数据进行验证。力-位移测量是利用超声成像从异质琼脂-明胶的幻影。对样品的测量进行了分析,以获得材料性能的独立测量。对比验证了使用AutoP训练的神经网络本构模型(nncm)得出的材料性能。结果发现对测量误差和材料性能的空间变化具有鲁棒性。
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A data-driven approach to characterizing nonlinear elastic behavior of soft materials.
The Autoprogressive (AutoP) method is a data-driven inverse method that leverages finite element analysis (FEA) and machine learning (ML) techniques to build constitutive relationships from measured force and displacement data. Previous applications of AutoP in tissue-like media have focused on linear elastic mechanical behavior as the target object is infinitesimally compressed. In this study, we extended the application of AutoP in characterizing nonlinear elastic mechanical behavior as the target object undergoes finite compressive deformation. Guided by the prior of nonlinear media, we modified the training data generated by AutoP to speed its ability to learn to model deformations. AutoP training was validated using both synthetic and experimental data recorded from 3D objects. Force-displacement measurements were obtained using ultrasonic imaging from heterogeneous agar-gelatin phantoms. Measurement on samples of phantom components were analyzed to obtain independent measurements of material properties. Comparisons validated the material properties found from neural network constitutive models (NNCMs) trained using AutoP. Results were found to be robust to measurement errors and spatial variations in material properties.
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