基于序列比对的相似样本选择方法在半导体行业的应用

M. Chakaroun, M. Djeziri, M. Ouladsine, J. Pinaton
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引用次数: 1

摘要

在半导体制造系统中,诊断方法是测量和比较在同一工艺水平上,由相同设备和相同指令处理的类似样品,以确定缺陷的根本原因。然而,半导体工业中可用于诊断分析的类似样品的数量通常非常有限。在这种情况下,选择更多相似的样本进行分析是一个很大的挑战。首先,需要考虑不同的因素(相同的工艺水平,可测量的样本,可比较的样本)。其次,需要分析各种数据(工艺历史数据、产品模型数据、测量数据)。本文提出了一种基于过程中产品活性序列的相似样本选择(3S)方法。采用局部序列比对算法对活动进行比对,确定相似区域并计算相似度指数。为了在半导体制造系统的实际数据上测试所提出的方法,开发了一个原型。结果表明,可以选择大量相似的样品进行测量,并显着减少了分析时间。
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Similar sample selection approach based on sequence alignment; application to semiconductor industry
In semiconductor manufacturing system, diagnosis method consists in measuring and comparing similar samples that are taken at the same process level, processed by the same equipment and the same instructions in order to identify the defect root cause. However, the number of similar samples available for diagnosis analysis in semiconductor industries is often very limited. In this case, select more similar samples for the analysis is a great challenge. First, the different factors (same process level, measurable sample, comparable sample) need to be considered. Second, the various data (process historic data, product models data, measurement data) need to be analyzed. This paper proposes a Similar Samples Selection (3S) approach based on the activity sequences of products in the process. Local sequence alignment algorithm is used to align the activities in order to determine the similar regions and to calculate the similarity index. A prototype has been developed in order to test the proposed approach on real data in semiconductor manufacturing system. Result shows a large number of similar samples that could be selected for the measurement as well as a significant reduction of analysis time.
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