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Multiblock Principal Component Analysis Based on a Combined Index for Semiconductor Fault Detection and Diagnosis

机译:基于组合指标的多块主成分分析法在半导体故障检测与诊断中的应用

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The purposes of multivariate statistical process control (MSPC) are to improve process operations by quickly detecting when process abnormalities have occurred and diagnosing the sources of the process abnormalities. In the area of semiconductor manufacturing, increased yield and improved product quality result from reducing the amount of wafers produced under suboptimal operating conditions. This paper presents a complete MSPC application method that combines recent contributions to the field, including multiway principal component analysis (PCA), recursive PCA, fault detection using a combined index, and fault contributions from Hotelling's T{sup}2 statistic. In addition, a method for determining multiblock fault contributions to the combined index is introduced. The effectiveness of the system is demonstrated using postlithography metrology data and plasma stripper processing tool data.
机译:多元统计过程控制(MSPC)的目的是通过快速检测何时发生了过程异常并诊断过程异常的来源来改善过程操作。在半导体制造领域,通过减少在次优操作条件下生产的晶圆数量,可以提高产量并提高产品质量。本文提出了一种完整的MSPC应用方法,该方法结合了该领域的最新贡献,包括多路主成分分析(PCA),递归PCA,使用组合索引的故障检测以及Hotelling的T {sup} 2统计量的故障贡献。此外,介绍了一种确定多块故障对组合索引的影响的方法。使用光刻后的计量数据和等离子汽提塔处理工具数据证明了该系统的有效性。

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