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Stochastic isotropic hyperelastic materials: constitutive calibration and model selection

机译:随机各向同性超弹性材料:本构校正和模型选择

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摘要

Biological and synthetic materials often exhibit intrinsic variability in their elastic responses under large strains, owing to microstructural inhomogeneity or when elastic data are extracted from viscoelastic mechanical tests. For these materials, although hyperelastic models calibrated to mean data are useful, stochastic representations accounting also for data dispersion carry extra information about the variability of material properties found in practical applications. We combine finite elasticity and information theories to construct homogeneous isotropic hyperelastic models with random field parameters calibrated to discrete mean values and standard deviations of either the stress–strain function or the nonlinear shear modulus, which is a function of the deformation, estimated from experimental tests. These quantities can take on different values, corresponding to possible outcomes of the experiments. As multiple models can be derived that adequately represent the observed phenomena, we apply Occam’s razor by providing an explicit criterion for model selection based on Bayesian statistics. We then employ this criterion to select a model among competing models calibrated to experimental data for rubber and brain tissue under single or multiaxial loads.
机译:由于微观结构的不均匀性或从粘弹性力学测试中提取弹性数据时,生物和合成材料在大应变下的弹性响应通常表现出固有的变异性。对于这些材料,尽管校准为均值数据的超弹性模型很有用,但考虑到数据分散性的随机表示也携带了有关实际应用中材料性能变化性的额外信息。我们将有限弹性和信息理论相结合,构造均质各向同性的超弹性模型,其随机场参数已校准为离散均值和应力-应变函数或非线性剪切模量(其是变形的函数)的标准偏差,根据实验测试得出。这些数量可以取不同的值,对应于实验的可能结果。由于可以衍生出足够多的模型来充分表示所观察到的现象,因此我们通过提供基于贝叶斯统计数据的模型选择标准来使用Occam剃刀。然后,我们采用该标准从竞争模型中选择一个模型,该模型已针对单轴或多轴载荷下的橡胶和脑组织的实验数据进行了校准。

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