Physics-constrained symbolic model discovery for polyconvex incompressible hyperelastic materials

IF 2.7 3区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Bahador Bahmani, WaiChing Sun
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引用次数: 0

Abstract

We present a machine learning framework capable of consistently inferring mathematical expressions of hyperelastic energy functionals for incompressible materials from sparse experimental data and physical laws. To achieve this goal, we propose a polyconvex neural additive model (PNAM) that enables us to express the hyperelastic model in a learnable feature space while enforcing polyconvexity. An upshot of this feature space obtained via the PNAM is that (1) it is spanned by a set of univariate basis functions that can be re-parametrized with a more complex mathematical form, and (2) the resultant elasticity model is guaranteed to fulfill the polyconvexity, which ensures that the acoustic tensor remains elliptic for any deformation. To further improve the interpretability, we use genetic programming to convert each univariate basis into a compact mathematical expression. The resultant multi-variable mathematical models obtained from this proposed framework are not only more interpretable but are also proven to fulfill physical laws. By controlling the compactness of the learned symbolic form, the machine learning-generated mathematical model also requires fewer arithmetic operations than its deep neural network counterparts during deployment. This latter attribute is crucial for scaling large-scale simulations where the constitutive responses of every integration point must be updated within each incremental time step. We compare our proposed model discovery framework against other state-of-the-art alternatives to assess the robustness and efficiency of the training algorithms and examine the trade-off between interpretability, accuracy, and precision of the learned symbolic hyperelastic models obtained from different approaches. Our numerical results suggest that our approach extrapolates well outside the training data regime due to the precise incorporation of physics-based knowledge.

多凸不可压缩超弹性材料的物理约束符号模型发现
我们提出了一种机器学习框架,能够从稀疏的实验数据和物理定律中持续推断不可压缩材料的超弹性能量函数数学表达式。为了实现这一目标,我们提出了一种多凸神经加法模型(PNAM),它能让我们在可学习的特征空间中表达超弹性模型,同时强制实现多凸性。通过 PNAM 获得的特征空间的结果是:(1) 它由一组单变量基函数跨越,这些基函数可以用更复杂的数学形式重新参数化;(2) 由此产生的弹性模型保证满足多凸性,从而确保声学张量在任何变形情况下都保持椭圆形。为了进一步提高可解释性,我们使用遗传编程将每个单变量基础转换为简洁的数学表达式。从这一提议的框架中得到的多变量数学模型不仅更具可解释性,而且被证明符合物理定律。通过控制所学符号形式的紧凑性,机器学习生成的数学模型在部署过程中所需的算术运算也少于深度神经网络。在大规模模拟中,每个积分点的构造响应都必须在每个增量时间步长内进行更新,因此后一个特性对于大规模模拟的扩展至关重要。我们将我们提出的模型发现框架与其他最先进的替代方法进行了比较,以评估训练算法的鲁棒性和效率,并考察了从不同方法中获得的符号超弹性模型的可解释性、准确性和精确性之间的权衡。我们的数值结果表明,由于精确地融入了基于物理学的知识,我们的方法可以很好地在训练数据体系之外进行推断。
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来源期刊
CiteScore
5.70
自引率
6.90%
发文量
276
审稿时长
5.3 months
期刊介绍: The International Journal for Numerical Methods in Engineering publishes original papers describing significant, novel developments in numerical methods that are applicable to engineering problems. The Journal is known for welcoming contributions in a wide range of areas in computational engineering, including computational issues in model reduction, uncertainty quantification, verification and validation, inverse analysis and stochastic methods, optimisation, element technology, solution techniques and parallel computing, damage and fracture, mechanics at micro and nano-scales, low-speed fluid dynamics, fluid-structure interaction, electromagnetics, coupled diffusion phenomena, and error estimation and mesh generation. It is emphasized that this is by no means an exhaustive list, and particularly papers on multi-scale, multi-physics or multi-disciplinary problems, and on new, emerging topics are welcome.
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