Constitutive models that describe the mechanical behavior of soft tissues have advanced greatly over the past few decades. These expert models are generalizable and require the calibration of a number of parameters to fit experimental data. However, inherent pitfalls stemming from the restriction to a specific functional form include poor fits to the data, non-uniqueness of fit, and high sensitivity to parameters. In this study we design and train fully connected neural networks as material models to replace or augment expert models. To guarantee objectivity, the neural network takes isochoric strain invariants as inputs, and outputs the value of strain energy and its derivatives with respect to the invariants. Convexity of the material model is enforced through the loss function. Direct prediction of the derivative functions -- rather than just predicting the energy -- serves two purposes: it provides flexibility during training, and it enables the calculation of the elasticity tensor through back-propagation. We showcase the ability of the neural network to learn the mechanical behavior of porcine and murine skin from biaxial test data. Crucially, we show that a multi-fidelity scheme which combines high fidelity experimental data with low fidelity analytical data yields the best performance. The neural network material model can then be interpreted as the best extension of an expert model: it learns the features that an expert has encoded in the analytical model while fitting the experimental data better. Finally, we implemented a general user material subroutine (UMAT) for the finite element software Abaqus and thereby make our advances available to the broader computational community. We expect that the methods and software generated in this work will broaden the use of data-driven constitutive models in biomedical applications.
翻译:描述软组织机械行为的结构模型在过去几十年中取得了很大进步。 这些专家模型是可概括的,需要对一些参数进行校准,以适应实验数据。 但是,限制特定功能形式的内在缺陷包括数据不适应、不不统一、对参数敏感。 在这项研究中,我们设计和训练完全连接的神经网络,作为取代或增强专家模型的材料模型。为了保证客观性,神经网络吸收了不精密的变异体作为投入,并输出着变异体的变异体的变异体变异体的变异体的变异体能量及其衍生物的价值。 材料模型的精度通过损失功能得到增强。 对衍生功能的直接预测 -- -- 而不是仅仅预测能量 -- -- 有两个目的:在培训期间提供灵活性,并且通过反演算来计算弹性的神经网络。 我们展示了神经网络从双轴测试数据中学习孔和软体皮肤皮肤的机械行为的能力。 关键是,我们展示了一种多纤维应用的变异性能源及其衍生物的精度值值, 通过损失函数模型将我们最精确的实验性数据化的计算方法结合了一个实验性的数据模型, 最终的实验性数据分析模型将分析模型的模型的模型的模型的模型将产生结果。