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Monitoring virtual metrology reliability in a sampling decision system

机译:监视采样决策系统中的虚拟计量可靠性

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In semiconductor manufacturing, metrology operations are expensive and time-consuming, for this reason only a certain sample of wafers is measured. With the need of highly reliable processes, the semiconductor industry is interested in developing methodologies covering the gap of missing metrology information. Virtual Metrology (VM) turns out to be a promising method; it aims to predict wafer and/or site fine metrology results in real time and free of costs. Using virtual measurements as the input of a sampling decision system (SDS), an optimal strategy for measuring productive wafers can be suggested. Since sampling decisions strongly depend on the accuracy of the VM system, it is a key requirement to monitor the reliability of the obtained predictions. In this paper, we present approaches for dynamically assessing VM reliability using real metrology data. A Bayesian dynamical linear model (BDLM) handles increasing VM model uncertainty over time. Model parameters are updated whenever new real measurements become available. VM prediction quality is monitored applying a probability integral transform (PIT) and scoring rules for predictive probability distributions. Inferring equipment health factors (EHF), unreliable predictions can be detected before being delivered to the SDS. Based on the likelihood of the predicted measurements, VM trust factors are introduced. A Bayesian model for the prediction precision matrix allows updating the virtual measurements' uncertainty whenever real measurements are available. Taking account of the proposed methods, one is led to an improved accuracy of the SDS.
机译:在半导体制造中,计量操作昂贵且耗时,因此仅测量某个晶片样品。由于需要高度可靠的流程,半导体行业对开发涵盖缺失计量信息差距的方法感兴趣。虚拟计量(VM)结果是有希望的方法;它旨在预测晶片和/或网站的微量计量结果,实时导致并没有成本。使用虚拟测量作为采样决策系统的输入(SDS),可以提出测量生产晶圆的最佳策略。由于采样决策强烈取决于VM系统的准确性,因此监视所获得的预测的可靠性是一个关键要求。在本文中,我们使用实际计量数据提出了动态评估VM可靠性的方法。贝叶斯动态线性模型(BDLM)随着时间的推移,处理增加VM模型的不确定性。每当新的真实测量可用时,更新模型参数。监视VM预测质量,应用概率积分变换(PIT)和用于预测概率分布的评分规则。推断设备健康因子(EHF),可以在传送到SDS之前检测不可靠的预测。基于预测测量的可能性,介绍了VM信任因素。预测精度矩阵的贝叶斯模型允许在可用的真实测量时更新虚拟测量的不确定性。考虑到所提出的方法,一个导致SDS的提高精度。

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