等离子体刻蚀过程中粒子污染的k近邻和模糊k近邻检测

Noratika Mohammad Somari, M. F. Abdullah, M. K. Osman, A. M. Nazelan, K. A. Ahmad, Sooria Pragash Rao S. Appanan, Loh Kwang Hooi
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引用次数: 6

摘要

本文提出了基于k近邻和模糊k近邻的等离子体刻蚀过程中粒子污染检测方法。在半导体器件的制造过程中,检测加工工具中的颗粒污染是决定产品成品率的重要因素。原位颗粒是一种准确且经济有效的生产环境污染控制方法,可以在实际条件下实时测量颗粒。数据来源于统计过程控制(SPC)数据库和先进过程控制(APC)数据库。电压偏差的标准偏差,电压偏差的最小值和最大值之间的范围,电压偏差的平均值和每小时射频(RF)四个特征。对这些数据进行分析,以确定在等离子体蚀刻过程中能够与颗粒污染计数相关的重要特征。在本研究中,采用kNN和FkNN进行单个参数分析和组合多个参数分析。这一分析,用于将污染分为两个级别,即低颗粒污染和高颗粒污染。分析结果表明,kNN方法对电压偏置标准差的分析精度最高,为83.33%;FkNN方法对射频小时与电压偏置标准差的组合参数分析精度最高,为80.56%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particles contaminations detection during plasma etching process by using k-nearest neighbors and Fuzzy k-nearest neighbors
This paper present the particle contamination detection during plasma etching process by using k-nearest neighbor (kNN) and Fuzzy k-nearest neighbor (FkNN). In the process of manufacturing semiconductor devices, detecting particle contamination in process tool is a vital factor for determining for product yield. In situ particle is an accurate and cost effective method of contamination control in a production environment which possible to measure particles under actual conditions in real time. Data were collected from two sources Statistical Process Control (SPC) database and Advance Process Control (APC) database. There are four features which are Standard Deviation of voltage bias, Range between minimum and maximum of voltage bias, average of voltage bias and Radio frequency (RF) per Hour. These data are analyzed to identify important features that able to correlate with the particle contamination count during plasma etching process. In this research there are two part of analysis, individual parameter analysis and combination several parameter analysis by using kNN and FkNN. This analysis, used to classify into two levels of contamination, that are low and high particles contamination. By analysis results, kNN method is highest accuracy 83.33% by using standard deviation of voltage bias and FkNN show highest accuracy on combination parameters analysis 80.56% from combination between RF hour and standard deviation of voltage bias.
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