In semiconductor manufacturing, wafer map defect pattern provides critical information for facility maintenance and yield management, so the classification of defect patterns is one of the most important tasks in the manufacturing process. In this paper, we propose a novel way to represent the shape of the defect pattern as a finite-dimensional vector, which will be used as an input for a neural network algorithm for classification. The main idea is to extract the topological features of each pattern by using the theory of persistent homology from topological data analysis (TDA). Through some experiments with a simulated dataset, we show that the proposed method is faster and much more efficient in training with higher accuracy, compared with the method using convolutional neural networks (CNN) which is the most common approach for wafer map defect pattern classification. Moreover, our method outperforms the CNN-based method when the number of training data is not enough and is imbalanced.
翻译:在半导体制造中,Wafer地图缺陷模式为设施的维护和产量管理提供了关键信息,因此,缺陷模式的分类是制造过程中最重要的任务之一。在本文件中,我们提出一种新的方法,将缺陷模式的形状作为有限的维矢量来表示,它将用作神经网络分类算法的一种投入。主要想法是利用从地形数据分析中得出的持久性同质学理论来提取每种模式的地形特征。通过一些模拟数据集的实验,我们表明,与使用进化神经网络(CNN)的方法相比,拟议的方法在以更准确的方式进行培训方面速度更快,效率更高。 后者是用于裂变图缺陷模式分类的最常见方法。此外,在培训数据数量不够和不平衡的情况下,我们的方法比CNN方法要优于CNN方法。