论文标题
微观结构数据的图表的深度学习和多层次特征
Deep learning and multi-level featurization of graph representations of microstructural data
论文作者
论文摘要
许多材料响应功能在很大程度上取决于微观结构,例如相位或方向的不均匀性。均质化提出了预测微结构对外部加载样本的平均响应的任务,以用于亚网格模型和结构探索。尽管许多微观结构字段都有明显的分割,但是直接从分割引起的图中学习可能很困难,因为此表示并未编码整个字段的所有信息。鉴于本机离散化和初始输入字段的分割,我们开发了一种在还原图上深入学习隐藏特征的方法。这些特征与缩小图上表示为节点的区域有关。然后,减少的表示形式是随后的多级/比例图卷积网络模型的基础。在使用卷积层完全处理之前,有许多优势,可以减少图形,例如大型网格的可解释特征和效率。我们证明了使用三个物理示例直接在数据的天然离散化数据的基本离散化方面,相对于卷积神经网络的性能。
Many material response functions depend strongly on microstructure, such as inhomogeneities in phase or orientation. Homogenization presents the task of predicting the mean response of a sample of the microstructure to external loading for use in subgrid models and structure-property explorations. Although many microstructural fields have obvious segmentations, learning directly from the graph induced by the segmentation can be difficult because this representation does not encode all the information of the full field. We develop a means of deep learning of hidden features on the reduced graph given the native discretization and a segmentation of the initial input field. The features are associated with regions represented as nodes on the reduced graph. This reduced representation is then the basis for the subsequent multi-level/scale graph convolutional network model. There are a number of advantages of reducing the graph before fully processing with convolutional layers it, such as interpretable features and efficiency on large meshes. We demonstrate the performance of the proposed network relative to convolutional neural networks operating directly on the native discretization of the data using three physical exemplars.