We extend the scope of our approach for unsupervised automated discovery of material laws (EUCLID) to the case of a material belonging to an unknown class of behavior. To this end, we leverage the theory of generalized standard materials, which encompasses a plethora of important constitutive classes. We show that, based only on full-field kinematic measurements and net reaction forces, EUCLID is able to automatically discover the two scalar thermodynamic potentials, namely, the Helmholtz free energy and the dissipation potential, which completely define the behavior of generalized standard materials. The a priori enforced constraint of convexity on these potentials guarantees by construction stability and thermodynamic consistency of the discovered model; balance of linear momentum acts as a fundamental constraint to replace the availability of stress-strain labeled pairs; sparsity promoting regularization enables the automatic selection of a small subset from a possibly large number of candidate model features and thus leads to a parsimonious, i.e., simple and interpretable, model. Importantly, since model features go hand in hand with the correspondingly active internal variables, sparse regression automatically induces a parsimonious selection of the few internal variables needed for an accurate but simple description of the material behavior. A fully automatic procedure leads to the selection of the hyperparameter controlling the weight of the sparsity promoting regularization term, in order to strike a user-defined balance between model accuracy and simplicity. By testing the method on synthetic data including artificial noise, we demonstrate that EUCLID is able to automatically discover the true hidden material model from a large catalog of constitutive classes, including elasticity, viscoelasticity, elastoplasticity, viscoplasticity, isotropic and kinematic hardening.
翻译:我们将不受监督地自动发现材料法(EUCLID)的方法范围扩大到属于未知行为类别的材料。为此,我们利用通用标准材料理论,该理论包含大量重要的构成类。我们显示,仅仅基于全场运动测量和净反应力量,EUCLID能够自动发现两种热动力动力潜力,即Helmholtz自由度和消散潜力,它们完全界定了通用标准材料的行为。这些潜力等级的先前硬性保守性约束,即建筑稳定性和所发现模型的热性一致性一致性;线性势头平衡作为基本制约,取代压力压力-压力-压力-定型对配对的配对;促进调能自动从可能大量候选模型特征中选择一个小的子,从而导致模型性、即简单和可解释性,并且能够解释。由于模型特征与积极促进内部的精确性保证,包括精确性机能-机能性机能-机能性机能-机能性机能性精确度的精确度测试方法导致一个需要的硬性机能性内部结构选择过程。