Viscoelasticty with physics-augmented neural networks: model formulation and training methods without prescribed internal variables

IF 3.7 2区 工程技术 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Max Rosenkranz, Karl A. Kalina, Jörg Brummund, WaiChing Sun, Markus Kästner
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引用次数: 0

Abstract

We present an approach for the data-driven modeling of nonlinear viscoelastic materials at small strains which is based on physics-augmented neural networks (NNs) and requires only stress and strain paths for training. The model is built on the concept of generalized standard materials and is therefore thermodynamically consistent by construction. It consists of a free energy and a dissipation potential, which can be either expressed by the components of their tensor arguments or by a suitable set of invariants. The two potentials are described by fully/partially input convex neural networks. For training of the NN model by paths of stress and strain, an efficient and flexible training method based on a long short-term memory cell is developed to automatically generate the internal variable(s) during the training process. The proposed method is benchmarked and thoroughly compared with existing approaches. Different databases with either ideal or noisy stress data are generated for training by using a conventional nonlinear viscoelastic reference model. The coordinate-based and the invariant-based formulation are compared and the advantages of the latter are demonstrated. Afterwards, the invariant-based model is calibrated by applying the three training methods using ideal or noisy stress data. All methods yield good results, but differ in computation time and usability for large data sets. The presented training method based on a recurrent cell turns out to be particularly robust and widely applicable. We show that the presented model together with the recurrent cell for training yield complete and accurate 3D constitutive models even for sparse bi- or uniaxial training data.

Abstract Image

物理增强神经网络的粘弹性:无规定内部变量的模型制定和训练方法
我们提出了一种基于物理增强神经网络(NN)的小应变非线性粘弹性材料数据驱动建模方法,该方法仅需要应力和应变路径进行训练。该模型基于广义标准材料的概念,因此在构造上与热力学一致。它由自由能和耗散势能组成,这两个势能可以用其张量参数的分量或一组合适的不变式来表示。这两个势能由完全/部分输入的凸神经网络描述。为通过应力和应变路径训练神经网络模型,开发了一种基于长短期记忆单元的高效灵活的训练方法,可在训练过程中自动生成内部变量。对所提出的方法进行了基准测试,并与现有方法进行了全面比较。通过使用传统的非线性粘弹性参考模型,生成了包含理想或噪声应力数据的不同数据库用于训练。比较了基于坐标的方法和基于不变式的方法,并展示了后者的优势。随后,使用理想或噪声应力数据,通过三种训练方法对基于不变式的模型进行校准。所有方法都取得了良好的结果,但在计算时间和大型数据集的可用性方面存在差异。结果表明,基于递归单元的训练方法特别稳健,适用范围也很广。我们的研究表明,即使是对于稀疏的双轴或单轴训练数据,所提出的模型和用于训练的递归单元也能生成完整而精确的三维结构模型。
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来源期刊
Computational Mechanics
Computational Mechanics 物理-力学
CiteScore
7.80
自引率
12.20%
发文量
122
审稿时长
3.4 months
期刊介绍: The journal reports original research of scholarly value in computational engineering and sciences. It focuses on areas that involve and enrich the application of mechanics, mathematics and numerical methods. It covers new methods and computationally-challenging technologies. Areas covered include method development in solid, fluid mechanics and materials simulations with application to biomechanics and mechanics in medicine, multiphysics, fracture mechanics, multiscale mechanics, particle and meshfree methods. Additionally, manuscripts including simulation and method development of synthesis of material systems are encouraged. Manuscripts reporting results obtained with established methods, unless they involve challenging computations, and manuscripts that report computations using commercial software packages are not encouraged.
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