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Clustering discretization methods for generation of material performance databases in machine learning and design optimization

机译:集群在机器学习和设计优化中生成材料性能数据库的分散化方法

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Mechanical science and engineering can use machine learning. However, data sets have remained relatively scarce; fortunately, known governing equations can supplement these data. This paper summarizes and generalizes three reduced order methods: self-consistent clustering analysis, virtual clustering analysis, and FEM-clustering analysis. These approaches have two-stage structures: unsupervised learning facilitates model complexity reduction and mechanistic equations provide predictions. These predictions define databases appropriate for training neural networks. The feed forward neural network solves forward problems, e.g., replacing constitutive laws or homogenization routines. The convolutional neural network solves inverse problems or is a classifier, e.g., extracting boundary conditions or determining if damage occurs. We will explain how these networks are applied, then provide a practical exercise: topology optimization of a structure (a) with non-linear elastic material behavior and (b) under a microstructural damage constraint. This results in microstructure-sensitive designs with computational effort only slightly more than for a conventional linear elastic analysis.
机译:机械科学与工程可以使用机器学习。但是,数据集仍然相对稀缺;幸运的是,知名的管理方程可以补充这些数据。本文总结并概括了三种减少的订单方法:自我一致的聚类分析,虚拟聚类分析和有限元聚类分析。这些方法具有两阶段结构:无监督的学习促进模型复杂性减少和机械方程提供预测。这些预测定义了适合培训神经网络的数据库。馈送前向神经网络解决了前向问题,例如,取代本构规则或均质化惯例。卷积神经网络解决了逆问题,或者是分类器,例如,提取边界条件或确定是否发生损坏。我们将解释如何应用这些网络,然后提供实际的运动:在微结构损伤约束下具有非线性弹性材料行为的结构(a)的结构(a)的拓扑优化。这导致微结构敏感设计,计算努力仅略微超过传统的线性弹性分析。

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