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首页> 外文期刊>Semiconductor Manufacturing, IEEE Transactions on >Max Separation Clustering for Feature Extraction From Optical Emission Spectroscopy Data
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Max Separation Clustering for Feature Extraction From Optical Emission Spectroscopy Data

机译:最大分离聚类用于从发射光谱数据中提取特征

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摘要

This paper proposes max separation clustering (MSC), a new non-hierarchical clustering method used for feature extraction from optical emission spectroscopy (OES) data for plasma etch process control applications. OES data is high dimensional and inherently highly redundant with the result that it is difficult if not impossible to recognize useful features and key variables by direct visualization. MSC is developed for clustering variables with distinctive patterns and providing effective pattern representation by a small number of representative variables. The relationship between signal-to-noise ratio (SNR) and clustering performance is highlighted, leading to a requirement that low SNR signals be removed before applying MSC. Experimental results on industrial OES data show that MSC with low SNR signal removal produces effective summarization of the dominant patterns in the data.
机译:本文提出了最大分离聚类(MSC),这是一种新的非分层聚类方法,用于从等离子蚀刻过程控制应用程序的光发射光谱(OES)数据中提取特征。 OES数据是高维数据,并且本质上是高度冗余的,因此,即使不是不可能,也很难通过直接可视化来识别有用的功能和关键变量。 MSC的开发目的是对具有独特模式的变量进行聚类,并通过少量代表性变量提供有效的模式表示。突出显示了信噪比(SNR)与聚类性能之间的关系,从而导致要求在应用MSC之前先去除低SNR信号。工业OES数据的实验结果表明,具有低SNR信号去除能力的MSC可以有效总结数据中的主导模式。

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