标题: | 运用资料探勘技术分析半导体晶圆图形 Mining the Yield Patterns of Semiconductor Wafer to Identify Abnormal Process Equipments |
作者: | 杨谨漪 Yang, Chin-Yi 刘敦仁 Liu, Dun-Ren 管理学院资讯管理学程 |
关键字: | 资料探勘;半导体;倒传递网路;DATA MINING;Semiconductor;Back-propagation Network |
公开日期: | 2006 |
摘要: | 在多变且快速的时代,电子产品日新月异,半导体晶圆代工厂必须不断提升高阶精密制程的能力,且快速提升晶片之产品良率(Yield),以提升竞争力。但是晶圆制造的生产步骤非常多与复杂,有许多可能影响产品品质的因子,所以良率异常的分析就变的很困难却又非常的重要。良率的异常大多是由生产的机台异常所造成,然而生产机台的类别与数量很多,故发生异常时并不容易马上被发掘出来。以工程师的经验,同类机台的异常通常会形成相似之良率异常的图样,故本研究以竹科某知名半导体厂作为实验分析对象,并应用(1)倒传递网路(Backpropagation)的技术,将半导体晶片相似之良率异常(Fail Bin)的图样分群,(2)再利用决策树(Classification by Decision Tree)分析寻找到关联与可疑异常之机台,以达到鉴别异常机台与良率提升的目的。实验结果显示所应用之方法能有效针对竹科半导体大厂良率低之产品,找出可疑异常的机台。 Taiwan semiconductor companies must design high-level technology product and increase the wafer yield rate to enhance their competitive advantages. However, the wafer process is very complex with a lot of steps and factors to affect the yield rate. Accordingly, it is very difficult and important for wafer yield analysis to find out the root cause. According to engineers’ experiences, process equipment issues are the major factors in low yield. However, the root cause is difficult to identify because many equipments are involved in a wafer process. Base on engineers’ experience, the low yield wafers usually have some special pattern in CP yield test result. Thus, we can use the characteristics to identify the problematic equipment. This study focuses on wafer yield pattern analysis to identify the problematic equipment. The thesis uses the data of a Taiwan semiconductor manufacturing company to conduct the analysis and experiment by using the following methods: (1) Apply ‘Classification by Backpropagation’ to classify wafer fail bin pattern; and (2) use the ‘Classification by Decision Tree’ Induction to identify related problematic equipment. The experiment results show that applying the proposed methods can fast classification fail yield bin pattern and find out the problematic equipments. |
URI: | http://140.113.39.130/cdrfb3/record/nctu/#GT009164530 http://hdl.handle.net/11536/62824 |
显示于类别: | Thesis |