Using process experienced correlation table to improve the accuracy and reliability of data mining for yield improvement

Haw-Jyue Luo, S.R. Wang, C. Chen, Hung-En Tai, Chen-Fu Chien, Pei-Nong Chen
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Abstract

The rapid innovation of new process technologies in the semiconductor industry, especially 12 inches Fab, along with continuously growing amounts of data, it is difficult to find root cause when problems occur in some process steps. It causes large amount of wafer scrapping. The analysis methods of traditional EDA system rely on experience of senior engineers. They need to define the suspected process step by their experience and then perform analysis. The analysis methods consume large amounts of human resources in order to determine the root cause of process and yield excursions. Hence, it is important that a knowledge retention method be incorporated to improve the efficiency of root cause analysis. Data mining, a new data analysis method that combines information science and technology of statistical analysis, is developed recently. The new generation data analysis method includes statistical, information science and mathematical calculation to find correlation between the target parameter, for example yield and other parameters. It will provide important clue to the analyzer. In addition, it also provides a direction to find root cause rapidly. It is difficult to find the correlation between the target parameter and other parameters by traditional statistical analysis method, and data mining can solve the blind point of the traditional method. This article discusses the design of how to define the relation between all data sources of semiconductor industry based on the experience of senior engineers. And it installs the relation to data mining analysis, it performs the analysis to identify relationship among all data sources. So, engineers can find the root cause of process issue in a short period of time
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利用过程经验关联表提高数据挖掘的准确性和可靠性,提高成品率
半导体行业新工艺技术的快速创新,特别是12英寸晶圆厂,随着数据量的不断增长,当某些工艺步骤出现问题时,很难找到根本原因。造成大量的晶圆报废。传统EDA系统的分析方法依赖于高级工程师的经验。他们需要根据自己的经验定义可疑的流程步骤,然后执行分析。分析方法消耗了大量的人力资源,以确定过程和良率偏差的根本原因。因此,采用知识保留方法来提高根本原因分析的效率是非常重要的。数据挖掘是近年来发展起来的一种将信息科学与统计分析技术相结合的新型数据分析方法。新一代的数据分析方法包括统计学、信息学和数学计算,以发现目标参数,如产量与其他参数之间的相关性。这将为分析提供重要线索。此外,也为快速查找根本原因提供了方向。传统的统计分析方法难以发现目标参数与其他参数之间的相关性,而数据挖掘可以解决传统方法的盲点。本文结合资深工程师的经验,讨论了如何定义半导体行业所有数据源之间的关系的设计。并将关系引入到数据挖掘分析中,通过分析来识别各数据源之间的关系。因此,工程师可以在短时间内找到工艺问题的根本原因
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