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首页> 外文期刊>Journal of microanolithography, MEMS, and MOEMS >Effect of measurement error budgets and hybrid metrology on qualification metrology sampling
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Effect of measurement error budgets and hybrid metrology on qualification metrology sampling

机译:测量误差预算和混合计量对资格计量抽样的影响

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摘要

Until now, metrologists had no statistics-based method to determine the sampling needed for an experiment before the start that accuracy experiment. We show a solution to this problem called inverse total measurement uncertainty (TMU) analysis, by presenting statistically based equations that allow the user to estimate the needed sampling after providing appropriate inputs, allowing him to make important "risk versus reward" sampling, cost, and equipment decisions. Application examples using experimental data from scatterometry and critical dimension scanning electron microscope tools are used first to demonstrate how the inverse TMU analysis methodology can be used to make intelligent sampling decisions and then to reveal why low sampling can lead to unstable and misleading results. One model is developed that can help experimenters minimize sampling costs. A second cost model reveals the inadequacy of some current sampling practices-and the enormous costs associated with sampling that provides reasonable levels of certainty in the result. We introduce the strategies on how to manage and mitigate these costs and begin the discussion on how fabs are able to manufacture devices using minimal reference sampling when qualifying metrology steps. Finally, the relationship between inverse TMU analysis and hybrid metrology is explored.
机译:到目前为止,计量学家还没有基于统计的方法来确定开始准确性实验之前需要进行的实验抽样。通过展示基于统计的方程式,用户可以在提供适当的输入后估算所需的采样,从而允许他做出重要的“风险与回报”采样,成本,和设备决策。首先使用来自散射测量和临界尺寸扫描电子显微镜工具的实验数据的应用实例来说明如何使用逆TMU分析方法来做出明智的采样决策,然后揭示为什么低采样会导致不稳定和误导性的结果。开发了一种可以帮助实验人员将采样成本降至最低的模型。第二种成本模型揭示了当前一些采样实践的不足之处,以及与采样相关的巨大成本,这些采样为结果提供了合理的确定性。我们介绍了有关如何管理和减轻这些成本的策略,并开始讨论在合格的计量步骤中晶圆厂如何能够使用最少的参考采样来制造设备。最后,探讨了反向TMU分析与混合计量之间的关系。

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