衍生元模型,将机器学习质量与增材制造背景下的设计库特征联系起来

Glen Williams, N. Meisel, T. Simpson, Christopher McComb
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引用次数: 1

摘要

增材制造是一个具有复杂信息“数字线程”的领域,它的广泛发展有助于推动设计存储库的创建,多个用户可以在其中上传、分发和下载各种情况下的各种候选设计。此外,增材制造工艺开发、设计框架和仿真方面的进步正在增加用增材制造制造的可能性,进一步增加了这些存储库的丰富性。机器学习提供了新的机会,将这些设计存储库组件的丰富几何数据与其相关的过程和性能数据相结合,以训练能够自动评估与增材制造部件可制造性相关的构建指标的预测模型。尽管可用于训练这些机器学习结构的设计存储库正在扩展,但我们对使特定设计存储库作为机器学习训练数据集有用的原因的理解很少。在这项研究中,我们使用一个元模型来预测单个设计存储库可以训练精确卷积神经网络的程度。为了方便这个元模型的创建和细化,我们构造了一个大型的人工设计存储库,并随后将其拆分为子存储库。然后,我们分析了关于子存储库的大小、复杂性和多样性的元数据,将其用作预测准确率的独立变量,以及训练卷积神经网络所需的训练计算量。每个网络预测三种增材制造构建指标之一:(1)零件质量,(2)支撑材料质量,(3)构建时间。我们的结果表明,元模型预测卷积神经网络的决定系数,而不是计算努力,是最准确的。设计库的大小、组成设计的平均复杂度、设计空间多样性的平均值和分布是卷积神经网络精度的最佳预测因子。
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Deriving Metamodels to Relate Machine Learning Quality to Design Repository Characteristics in the Context of Additive Manufacturing
The widespread growth of additive manufacturing, a field with a complex informatic “digital thread”, has helped fuel the creation of design repositories, where multiple users can upload distribute, and download a variety of candidate designs for a variety of situations. Additionally, advancements in additive manufacturing process development, design frameworks, and simulation are increasing what is possible to fabricate with AM, further growing the richness of such repositories. Machine learning offers new opportunities to combine these design repository components’ rich geometric data with their associated process and performance data to train predictive models capable of automatically assessing build metrics related to AM part manufacturability. Although design repositories that can be used to train these machine learning constructs are expanding, our understanding of what makes a particular design repository useful as a machine learning training dataset is minimal. In this study we use a metamodel to predict the extent to which individual design repositories can train accurate convolutional neural networks. To facilitate the creation and refinement of this metamodel, we constructed a large artificial design repository, and subsequently split it into sub-repositories. We then analyzed metadata regarding the size, complexity, and diversity of the sub-repositories for use as independent variables predicting accuracy and the required training computational effort for training convolutional neural networks. The networks each predict one of three additive manufacturing build metrics: (1) part mass, (2) support material mass, and (3) build time. Our results suggest that metamodels predicting the convolutional neural network coefficient of determination, as opposed to computational effort, were most accurate. Moreover, the size of a design repository, the average complexity of its constituent designs, and the average and spread of design spatial diversity were the best predictors of convolutional neural network accuracy.
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