论文标题
NN-Euclid:无应力数据的深度学习超弹性
NN-EUCLID: deep-learning hyperelasticity without stress data
论文作者
论文摘要
我们提出了一种新的方法,可以通过物理符合的深层神经网络对超弹性构成定律学习。与假设应力 - 应变对可用性的监督学习相反,该方法仅使用现实测量的全场外位移和全球反作用力数据,因此它在我们最近的有效无监督的本构构鉴定和发现(Euclid)的框架范围内,我们将其表示为NN-EDECLID。缺乏应力标签是通过基于线性动量的保护来指导学习过程来利用物理动机损失函数来补偿的。本构模型基于输入 - 控制神经网络,该网络能够学习一个相对于其输入的函数。通过采用特殊设计的神经网络结构,可以自动满足超弹性本构定律的多个物理和热力学约束,例如物质框架的冷漠,(poly-)凸度和无压力参考配置。我们展示了该方法准确学习几种隐藏的各向同性和各向异性高弹性本构定律的能力,例如Mooney -Rivlin,Arruda -Boyce,Ogden和Holzapfel模型,而无需使用压力数据。对于各向异性的高弹性,未知各向异性纤维方向自动与本构模型共同发现。基于神经网络的组成型模型显示出良好的概括能力,超出了训练期间观察到的应变状态,并且可以在一个通用有限元框架中可部署,以良好的精度模拟复杂的机械边界值问题。
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with physics-consistent deep neural networks. In contrast to supervised learning, which assumes the availability of stress-strain pairs, the approach only uses realistically measurable full-field displacement and global reaction force data, thus it lies within the scope of our recent framework for Efficient Unsupervised Constitutive Law Identification and Discovery (EUCLID) and we denote it as NN-EUCLID. The absence of stress labels is compensated for by leveraging a physics-motivated loss function based on the conservation of linear momentum to guide the learning process. The constitutive model is based on input-convex neural networks, which are capable of learning a function that is convex with respect to its inputs. By employing a specially designed neural network architecture, multiple physical and thermodynamic constraints for hyperelastic constitutive laws, such as material frame indifference, (poly-)convexity, and stress-free reference configuration are automatically satisfied. We demonstrate the ability of the approach to accurately learn several hidden isotropic and anisotropic hyperelastic constitutive laws - including e.g., Mooney-Rivlin, Arruda-Boyce, Ogden, and Holzapfel models - without using stress data. For anisotropic hyperelasticity, the unknown anisotropic fiber directions are automatically discovered jointly with the constitutive model. The neural network-based constitutive models show good generalization capability beyond the strain states observed during training and are readily deployable in a general finite element framework for simulating complex mechanical boundary value problems with good accuracy.