Multiscale simulations are demanding in terms of computational resources. In the context of continuum micromechanics, the multiscale problem arises from the need of inferring macroscopic material parameters from the microscale. If the underlying microstructure is explicitly given by means of microCT-scans, convolutional neural networks can be used to learn the microstructure-property mapping, which is usually obtained from computational homogenization. The CNN approach provides a significant speedup, especially in the context of heterogeneous or functionally graded materials. Another application is uncertainty quantification, where many expansive evaluations are required. However, one bottleneck of this approach is the large number of training microstructures needed. This work closes this gap by proposing a generative adversarial network tailored towards three-dimensional microstructure generation. The lightweight algorithm is able to learn the underlying properties of the material from a single microCT-scan without the need of explicit descriptors. During prediction time, the network can produce unique three-dimensional microstructures with the same properties of the original data in a fraction of seconds and at consistently high quality.
翻译:多尺度的模拟在计算资源方面要求很高。在连续微型机械方面,多尺度的问题产生于从微尺度中推断宏观材料参数的需要。如果基底微观结构是通过微CT扫描器明确提供的,则可以使用进化神经网络来学习微结构-财产绘图,这种绘图通常是从计算同质化中获得的。CNN方法提供了显著的加速,特别是在多种或功能分级材料方面。另一个应用是不确定性的量化,需要进行许多扩展评价。然而,这种方法的一个瓶颈是需要大量培训微型结构。这项工作缩小了这一差距,提出了适合三维微结构生成的基因对抗网络。轻量算法能够从单个微型CT扫描器中了解材料的内在特性,而不需要明确的脱钩器。在预测期间,网络可以产生独特的三维微观结构,其特性与原始数据在几秒内具有相同的特性,质量始终保持在很高的水平上。