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An enhanced variable selection and Isolation Forest based methodology for anomaly detection with OES data

机译:基于OES数据的异常检测的基于变量选择和隔离林的增强方法

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摘要

The development of efficient and interpretable anomaly detection systems is fundamental to keeping production costs low, and is an active area of research in semiconductor manufacturing, particularly in the context of using Optical Emission Spectroscopy (OES) data. The high dimension and correlated nature of OES data can limit the performance achievable with anomaly detection systems. In this paper we present a dimensionality reducing variable selection and isolation forest based anomaly detection and diagnosis methodology that addresses these issues. In particular, it takes account of isolated variables that can be overlooked when using conventional approaches such as PCA, and provides greater interpretability than afforded by PCA. The proposed methodology is illustrated with the aid of simulated and industrial plasma etch case studies.
机译:高效且可解释的异常检测系统的开发对于保持较低的生产成本至关重要,并且是半导体制造研究的活跃领域,尤其是在使用光发射光谱(OES)数据的情况下。 OES数据的高维度和相关性质可能会限制使用异常检测系统实现的性能。在本文中,我们提出了一种基于维数减少变量的选择和基于隔离林的异常检测和诊断方法,可以解决这些问题。特别是,它考虑了使用常规方法(例如PCA)时可以忽略的孤立变量,并提供了比PCA所提供的更好的解释性。借助模拟和工业等离子体蚀刻案例研究说明了所提出的方法。

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