Wafer Image Preprocessing Based on Density Based Spatial Clustering of Application with Noise

IF 0.6 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Zhang Wei, Shu-rui Hao
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引用次数: 0

Abstract

With the development of microelectronic manufacturing technology, semiconductor manufacturing presents the trend of maximization of scale and miniaturization of process size. Even if the wafer production now has a high automation of the production process, high-precision production equipment and advanced production technology, wafer abnormal situation is still inevitable. Abnormal conditions in semiconductor manufacturing process will reduce the yield of wafer products and increase production costs. The later analysis becomes the necessary means to improve the wafer yield. With the rapid development of modern computing power, the application of machine learning-based automatic detection method in semiconductor production is irresistible. In addition to its spatial pattern, there are many noises that can affect the classification of defects, so it is necessary to preprocess the wafer diagram. The traditional density based spatial clustering of application with noise (DBSCAN) algorithm needs to determine two clustering parameters artificially, and the choice of parameters can affect the clustering effect easily, the parameter list was obtained by K-mean nearest neighbor algorithm and mathematical expectation method, and the integrated parameters of intra-cluster density and inter-cluster density after DBSCAN clustering were selected as evaluation indexes to select the optimal parameters. Finally, a self-adaptive (SA)-DBSCAN map is obtained by retaining the largest cluster, adding feature points and feature clusters, thus improving the yield of wafer.
基于密度空间聚类的带噪声应用晶圆图像预处理
随着微电子制造技术的发展,半导体制造呈现出规模最大化和工艺尺寸微型化的趋势。即使现在的晶圆生产拥有高度自动化的生产工艺、高精度的生产设备和先进的生产技术,晶圆出现异常情况仍然不可避免。半导体生产过程中的异常情况会降低晶圆产品的良品率,增加生产成本。后期分析成为提高晶圆良品率的必要手段。随着现代计算能力的飞速发展,基于机器学习的自动检测方法在半导体生产中的应用势不可挡。除了空间模式之外,还有很多噪声会影响缺陷的分类,因此有必要对晶圆图进行预处理。传统的基于密度的带噪声应用空间聚类(DBSCAN)算法需要人为确定两个聚类参数,参数的选择容易影响聚类效果,本文通过 K-均值近邻算法和数学期望法得到参数列表,并选取 DBSCAN 聚类后的簇内密度和簇间密度的综合参数作为评价指标,选择最优参数。最后,通过保留最大簇、增加特征点和特征簇,得到自适应(SA)-DBSCAN 图,从而提高了晶圆的良率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Nanoelectronics and Optoelectronics
Journal of Nanoelectronics and Optoelectronics 工程技术-工程:电子与电气
自引率
16.70%
发文量
48
审稿时长
12.5 months
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