论文标题

使用卷积编码器学习预测微结构材料中的峰值应力

Predicting Peak Stresses In Microstructured Materials Using Convolutional Encoder-Decoder Learning

论文作者

Shrivastava, Ankit, Liu, Jingxiao, Dayal, Kaushik, Noh, Hae Young

论文摘要

这项工作提出了一种机器学习方法,以预测异质多晶材料中的峰值压力簇。在力学背景下使用机器学习的先前工作主要集中在预测应力场的有效响应和整体结构上。但是,他们预测峰值应力的能力 - 对失败至关重要 - 尚未探索,因为相对于整个域而言,峰值压力簇占据了一个较小的空间体积,因此需要计算昂贵的训练。这项工作开发了基于深度学习的卷积编码器方法,该方法的重点是预测峰值压力簇,特别是在异构线性弹性框架中群集的大小和其他特征。该方法基于卷积过滤器,该过滤器使用空间加权平均操作对微结构和应力场之间的局部空间关系进行建模。该模型首先是针对合成生成的微观结构中施加的宏观菌株下应力的线性弹性计算的训练,这是地面真理。然后,应用训练的模型来预测给定(合成生成的)微结构的应力场,然后检测预测应力场内的峰值压力簇。使用余弦相似性度量分析了峰值压力预测的准确性,并通过将峰值压力簇的几何特性与地面真相计算进行比较。观察到,与较低的峰值应力值相比,该模型能够学习和预测峰值压力簇的几何细节,尤其是对于峰值应力的较高(归一化)值的表现更好。这些比较表明,所提出的方法非常适合预测峰值压力簇的特征。

This work presents a machine learning approach to predict peak-stress clusters in heterogeneous polycrystalline materials. Prior work on using machine learning in the context of mechanics has largely focused on predicting the effective response and overall structure of stress fields. However, their ability to predict peak stresses -- which are of critical importance to failure -- is unexplored, because the peak-stress clusters occupy a small spatial volume relative to the entire domain, and hence requires computationally expensive training. This work develops a deep-learning based Convolutional Encoder-Decoder method that focuses on predicting peak-stress clusters, specifically on the size and other characteristics of the clusters in the framework of heterogeneous linear elasticity. This method is based on convolutional filters that model local spatial relations between microstructures and stress fields using spatially weighted averaging operations. The model is first trained against linear elastic calculations of stress under applied macroscopic strain in synthetically-generated microstructures, which serves as the ground truth. The trained model is then applied to predict the stress field given a (synthetically-generated) microstructure and then to detect peak-stress clusters within the predicted stress field. The accuracy of the peak-stress predictions is analyzed using the cosine similarity metric and by comparing the geometric characteristics of the peak-stress clusters against the ground-truth calculations. It is observed that the model is able to learn and predict the geometric details of the peak-stress clusters and, in particular, performed better for higher (normalized) values of the peak stress as compared to lower values of the peak stress. These comparisons showed that the proposed method is well-suited to predict the characteristics of peak-stress clusters.

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