增材制造超材料的机器学习辅助有限元建模。

IF 3.2 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Alexander Meynen, Hma Kolken, Michiel Mulier, Amir A Zadpoor, Lennart Scheys
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引用次数: 0

摘要

三维(3D)打印的元生物材料的力学特性正在迅速成为新型医疗器械概念发展的关键一步,包括用于骨科应用的功能分级植入物。有限元模拟是一种有效的、fda认可的替代实验测试的方法,实验测试耗时、昂贵、费力。然而,当应用于3d打印的超生物材料时,最先进的有限元建模方法变得越来越复杂,而它们的准确性仍然有限。确定正确的建模参数是获得准确仿真结果的关键条件。本研究提出了一种基于机器学习的策略,用于识别模型参数,包括材料特性和模型边界条件,以实现宏观力学行为的准确模拟。为了实现这一目标,开发了一个物理信息人工神经网络模型(PIANN),并使用通过全自动有限元建模工作流生成的数据进行训练。随后,使用实际实验力-位移数据作为输入,对PIANN模型进行测试。利用3d打印结构的实验数据预测相关参数进行有限元建模。最后,将仿真结果与实验数据进行定性和定量对比,验证了该工作流的有效性。基于这些结果,我们得出结论,所提出的工作流程可以识别模型参数,从而使相关有限元模拟的预测与实验观察结果相一致。此外,由此产生的有限元模型被发现在定量和定性精度方面优于最先进的模型。因此,提出的策略有可能促进有限元模拟在评估3d打印部件,特别是3d打印元生物材料方面的更广泛应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-assisted finite element modeling of additively manufactured meta-materials.

Mechanical characterization of three-dimensional (3D) printed meta-biomaterials is rapidly becoming a crucial step in the development of novel medical device concepts, including those used in functionally graded implants for orthopedic applications. Finite element simulations are a valid, FDA-acknowledged alternative to experimental tests, which are time-consuming, expensive, and labor-intensive. However, when applied to 3D-printed meta-biomaterials, state-of-the-art finite element modeling approaches are becoming increasingly complex, while their accuracy remains limited. A critical condition for accurate simulation results is the identification of correct modelling parameters. This study proposes a machine learning-based strategy for identifying model parameters, including material properties and model boundary conditions, to enable accurate simulations of macro-scale mechanical behavior. To achieve this goal, a physics-informed artificial neural network model (PIANN) was developed and trained using data generated through a fully automated finite element modeling workflow. Subsequently, the PIANN model was then tested using real experimental force-displacement data as its input. The experimental data from 3D-printed structures were used to predict the associated parameters for finite element modeling. Finally, the workflow was validated by qualitatively and quantitatively comparing simulation results to the experimental data. Based on these results, we concluded that the proposed workflow could identify model parameters such that the predictions of associated finite element simulations are in agreement with experimental observations. Furthermore, resulting finite element models were found to outperform state-of-the-art models in terms of both quantitative and qualitative accuracy. Therefore, the proposed strategy has the potential to facilitate the broader application of finite element simulations in evaluating 3D-printed parts, in general, and 3D-printed meta-biomaterials, in particular.

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