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Probe test yield optimization based on canonical correlation analysis between process control monitoring variables and probe bin variables

机译:基于过程控制监视变量和探针仓变量之间的典型相关分析的探针测试产量优化

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Process control monitoring (PCM) data provide information that is used to track abnormal processes and estimate various probe bin yields. However, multi-dimensional information has not yet been fully utilized from both PCM data and probe bins. In this paper, we proposed a canonical correlation analysis in order to investigate the relationship between multiple PCM variables and various probe bin variables. Polynomial regression was also employed as a methodology for maximizing the performance yield based on the results of the canonical correlation analysis. Two conclusions were drawn from the results of this research. First, the PCM variables that affected the probe bins were contact resistance, sheet resistance, and Isat_P4H as well as threshold voltage (Vt) during the process tuning step. Second, the typical values of Vtl_P4H and lsat_P4H should be changed in order to maximize the performance yield. The proposed method can be used for yield improvement and as a problem-solving approach for optimizing the 1C process.
机译:过程控制监视(PCM)数据提供了用于跟踪异常过程并估计各种探针仓产量的信息。但是,尚未从PCM数据和探针箱中充分利用多维信息。在本文中,我们提出了典范的相关性分析,以研究多个PCM变量与各种探针箱变量之间的关系。基于规范相关分析的结果,多项式回归也被用作最大化绩效收益的方法。从这项研究的结果得出两个结论。首先,影响探针仓的PCM变量是过程调整步骤中的接触电阻,薄层电阻和Isat_P4H以及阈值电压(Vt)。其次,应更改Vtl_P4H和lsat_P4H的典型值,以使性能收益最大化。所提出的方法可用于提高产量,并可作为优化1C工艺的解决问题的方法。

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