基于深度卷积神经网络的集成电路晶圆故障识别与分类

G. Ram, M. Subbarao, D. R. Varma, A. S. Krishna
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引用次数: 0

摘要

本文提出了一种基于增强深度卷积神经网络(DCNN)的晶圆图制造缺陷检测与分类方法。晶圆片是由半导体材料制成的小圆盘,通常是硅,构成集成电路的基础。每个晶圆上都生产模分离集成电路(ic)。自动检测机评估晶圆上集成电路的功能。在晶圆图上,合格和不合格模具的区域模式可以识别特定的生产故障。利用深度学习技术,可以有效地对晶圆上的缺陷模式进行分类,从而可以快速识别生产缺陷,从而实现早期制造过程纠正并最大限度地减少损失。重新采样是为了在训练模式之前解决数据不平衡问题。通过结合各种优化器来训练模型,进行进一步的性能分析。仿真结果表明,所提出的DCNN优于传统的CNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Deep Convolutional Neural Network for Identifying and Classification of Silicon Wafer Faults in IC Fabrication Industries
This paper presents the detection and classification of various manufacturing defects on wafer maps using an enhanced deep convolutional neural network (DCNN). Wafers are tiny discs of semiconducting material, often silicon, that form the basis of integrated circuits. Die-separated integrated circuits (ICs) are produced on each wafer. Automated inspection machines evaluate the functionality of ICs on wafers. On a wafer map, the regional pattern of the passing and failing dies might identify the specific production faults. Using techniques of deep learning, the defect patterns on wafers may be efficiently classified, making it possible to rapidly identify production defects, hence enabling early manufacturing process correction and minimising loss. Resampling is performed in order to resolve the data imbalance problem prior to the training modality. Further performance analysis is carried out by incorporating various optimizers to train the model. The simulation results depicted that the proposed DCNN outperforms the conventional CNN.
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