Beyond the generally deployed features for microstructure property prediction this study aims to improve the machine learned prediction by developing novel feature descriptors. Therefore, Bayesian infused data mining is conducted to acquire samples containing characteristics inexplicable to the current feature set, and suitable feature descriptors to describe these characteristics are proposed. The iterative development of feature descriptors resulted in 37 novel features, being able to reduce the prediction error by roughly one third. To further improve the predictive model, convolutional neural networks (Conv Nets) are deployed to generate auxiliary features in a supervised machine learning manner. The Conv Nets were able to outperform the feature based approach. A key ingredient for that is a newly proposed data augmentation scheme and the development of so-called deep inception modules. A combination of the feature based approach and the convolutional neural network leads to a hybrid neural network: A parallel deployment of the both neural network archetypes in a single model achieved a relative rooted mean squared error below 1%, more than halving the error compared to prior models operating on the same data. The hybrid neural network was found powerful enough to be extended to predict variable material parameters, from a low to high phase contrast, while allowing for arbitrary microstructure geometry at the same time.
翻译:除了用于微观结构财产预测的一般部署特征外,本研究旨在通过开发新型特征描述仪改进机器学预测,从而改进机器学的预测。因此,Bayesian注入的数据挖掘工作是为了获取含有当前特征组无法解释的特征的样本,并提出了描述这些特征的适当特征描述仪。迭代开发地貌描述仪产生了37个新特征,能够将预测误差减少大约三分之一。为了进一步改进预测模型,还部署了进化神经网络(Conv Nets),以便以监督的机器学习方式生成辅助性特征。Conv Nets能够超越基于特征的方法。这是一个关键要素,即新提出的数据增强计划和开发所谓的深层初始模块。基于地貌的方法和进化神经网络的组合导致一个混合神经网络:同时部署两个神经网络的拱门型(Convoralal Nets),在单一模型中实现了低于1%的相对深层次平均正方形错误,比在同一数据上运行的先前模型高出了一半。发现混和神经网络具有足够强大的力量,同时允许高的地理测量阶段,以便任意地将高度地进行高水平的测量。</s>