应用于工艺鉴定的机器学习方法

M. Herrmann, Stefan Meusemann, C. Utzny
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引用次数: 2

摘要

随着对高端口罩需求的大幅增加,提高相应生产线的产能变得越来越重要。为此,对生产线内匹配工具和过程的有效鉴定是至关重要的。匹配通常是通过在新工具和新工艺上加工专用批次来判断的。一方面,合格批号的数量应该非常少,因为合格板的生产成本很高,并且占用了生产走廊的产能。另一方面,高端产品的严格要求导致匹配标准的规格限制非常严格。因此,基于少量批次评估工具或工艺匹配通常是非常困难的。在本文中,我们阐述了一种基于机器学习的策略,该策略通过学习生产线变化中这些特征的典型行为来评估合格板的掩膜特性。我们表明,通过仔细选择参考生产板以及根据生产行为设置规格限制,我们可以通过使用少量口罩有效地管理合格任务。使用Naïve贝叶斯学习器选择和确定规格特征以及具体限制。通过考虑得到的接收操作曲线来评估预测工具和工艺匹配的性能。因此,我们获得了一种评估合格数据的方法,使工程师能够在大量测量不确定性的约束下使用少量匹配数据来评估工具和工艺匹配。展望未来,我们将讨论如何使用这种方法来检查检测过程故障的相反问题,即当当前生产特征开始偏离其典型特征时,自动提出标志的能力。总体而言,在本文中,我们展示了快速发展的机器学习领域如何越来越多地影响半导体生产过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning methods applied to process qualification
With the substantial surge in the need for high-end masks it becomes increasingly important to raise the capacity of the corresponding production lines. To this end the efficient qualification of matching tools and processes within a production line is of utmost relevance. Matching is typically judged by the processing of dedicated lots on the new tool and process. The amount of qualification lots should on the one hand be very small, as the production of qualification plates is expensive and uses capacity of the production corridor. On the other hand the strict requirements of high-end products induce very tight specification limits on the matching criteria. It is thus often very difficult to assess tool or process matching on the basis of a small amount of lots. In this paper we expound on a machine learning based strategy which assesses the mask characteristics of a qualification plate by learning the typical behavior of these characteristics within the production line variations. We show that by careful selection of reference production plates as well as by setting specification limits based on the production behavior we can manage the qualification tasks efficiently by using a small number of masks. The specification characteristics as well as the specific limits are selected and determined using a Naïve Bayes learner. The resulting performance for prediction of tool and process matching is assessed by considering the resulting receiving operator curve. As a result we obtain an approach towards the assessment of qualification data which enables engineers to assess the tool and process matching using a small amount of matching data under the constraint of substantial measurement uncertainties. As an outlook we discuss how this approach can be used to examine the reverse question of detecting process failures, i.e. the automated ability to raise a flag when the current production characteristics start to deviate from their typical characteristics. Overall, in this paper we show how the rapidly evolving field of machine learning increasingly impacts the semiconductor production process.
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