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首页> 外文期刊>International Journal for Numerical Methods in Engineering >A surrogate model for computational homogenization of elastostatics at finite strain using high-dimensional model representation-based neural network
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A surrogate model for computational homogenization of elastostatics at finite strain using high-dimensional model representation-based neural network

机译:基于高维模型代表的神经网络在有限菌株中塑造件的替代模型

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摘要

We propose a surrogate model for two-scale computational homogenization of elastostatics at finite strains. The macroscopic constitutive law is made numerically available via an explicit formulation of the associated macroenergy density. This energy density is constructed by using a neural network architecture that mimics a high-dimensional model representation. The database for training this network is assembled through solving a set of microscopic boundary value problems with the prescribed macroscopic deformation gradients (input data) and subsequently retrieving the corresponding averaged energies (output data). Therefore, the two-scale computational procedure for nonlinear elasticity can be broken down into two solvers for microscopic and macroscopic equilibrium equations that work separately in two stages, called the offline and online stages. The finite element method is employed to solve the equilibrium equation at the macroscale. As for microscopic problems, an FFT-based collocation method is applied in tandem with the Newton-Raphson iteration and the conjugate-gradient method. Particularly, we solve the microscopic equilibrium equation in the Lippmann-Schwinger form without resorting to the reference medium. In this manner, the fixed-point iteration that might require quite strict numerical stability conditions in the nonlinear regime is avoided. In addition, we derive the projection operator used in the FFT-based method for homogenization of elasticity at finite strain.
机译:我们在有限菌株中提出了一种替代模型,用于弹性化学的两个尺度计算均质化。通过显式配方进行数值可获得宏观构成律,通过相关的宏指合密度的明确制定。通过使用模拟高维模型表示的神经网络架构来构造这种能量密度。用于训练该网络的数据库通过求解一组微观边界值问题,并用规定的宏观变形梯度(输入数据)并随后检索相应的平均能量(输出数据)。因此,用于非线性弹性的两尺度计算过程可以分解成两个溶剂,用于分别在两个阶段分开工作,称为离线和在线阶段。采用有限元方法来解决宏观上的平衡方程。对于显微问题,基于FFT的搭配方法串联应用于牛顿-Raphson迭代和共轭梯度法。特别是,我们解决了Lippmann-Schwinger形式中的微观平衡方程,而不诉诸参考介质。以这种方式,避免了可能需要在非线性状态下需要相当严格的数值稳定条件的固定点迭代。此外,我们派生在基于FFT的方法中使用的投影算子,以在有限菌株下弹性均匀化。

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