Similarity ratio analysis for early stage fault detection with optical emission spectrometer in plasma etching process.

A Similarity Ratio Analysis (SRA) method is proposed for early-stage Fault Detection (FD) in plasma etching processes using real-time Optical Emission Spectrometer (OES) data as input. The SRA method can help to realise a highly precise control system by detecting abnormal etch-rate faults in real-t...

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Main Authors: Jie Yang, Conor McArdle, Stephen Daniels
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3995992?pdf=render
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spelling doaj-08637c997e6f47c59c75bab118a348c02020-11-25T00:47:03ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0194e9567910.1371/journal.pone.0095679Similarity ratio analysis for early stage fault detection with optical emission spectrometer in plasma etching process.Jie YangConor McArdleStephen DanielsA Similarity Ratio Analysis (SRA) method is proposed for early-stage Fault Detection (FD) in plasma etching processes using real-time Optical Emission Spectrometer (OES) data as input. The SRA method can help to realise a highly precise control system by detecting abnormal etch-rate faults in real-time during an etching process. The method processes spectrum scans at successive time points and uses a windowing mechanism over the time series to alleviate problems with timing uncertainties due to process shift from one process run to another. A SRA library is first built to capture features of a healthy etching process. By comparing with the SRA library, a Similarity Ratio (SR) statistic is then calculated for each spectrum scan as the monitored process progresses. A fault detection mechanism, named 3-Warning-1-Alarm (3W1A), takes the SR values as inputs and triggers a system alarm when certain conditions are satisfied. This design reduces the chance of false alarm, and provides a reliable fault reporting service. The SRA method is demonstrated on a real semiconductor manufacturing dataset. The effectiveness of SRA-based fault detection is evaluated using a time-series SR test and also using a post-process SR test. The time-series SR provides an early-stage fault detection service, so less energy and materials will be wasted by faulty processing. The post-process SR provides a fault detection service with higher reliability than the time-series SR, but with fault testing conducted only after each process run completes.http://europepmc.org/articles/PMC3995992?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Jie Yang
Conor McArdle
Stephen Daniels
spellingShingle Jie Yang
Conor McArdle
Stephen Daniels
Similarity ratio analysis for early stage fault detection with optical emission spectrometer in plasma etching process.
PLoS ONE
author_facet Jie Yang
Conor McArdle
Stephen Daniels
author_sort Jie Yang
title Similarity ratio analysis for early stage fault detection with optical emission spectrometer in plasma etching process.
title_short Similarity ratio analysis for early stage fault detection with optical emission spectrometer in plasma etching process.
title_full Similarity ratio analysis for early stage fault detection with optical emission spectrometer in plasma etching process.
title_fullStr Similarity ratio analysis for early stage fault detection with optical emission spectrometer in plasma etching process.
title_full_unstemmed Similarity ratio analysis for early stage fault detection with optical emission spectrometer in plasma etching process.
title_sort similarity ratio analysis for early stage fault detection with optical emission spectrometer in plasma etching process.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description A Similarity Ratio Analysis (SRA) method is proposed for early-stage Fault Detection (FD) in plasma etching processes using real-time Optical Emission Spectrometer (OES) data as input. The SRA method can help to realise a highly precise control system by detecting abnormal etch-rate faults in real-time during an etching process. The method processes spectrum scans at successive time points and uses a windowing mechanism over the time series to alleviate problems with timing uncertainties due to process shift from one process run to another. A SRA library is first built to capture features of a healthy etching process. By comparing with the SRA library, a Similarity Ratio (SR) statistic is then calculated for each spectrum scan as the monitored process progresses. A fault detection mechanism, named 3-Warning-1-Alarm (3W1A), takes the SR values as inputs and triggers a system alarm when certain conditions are satisfied. This design reduces the chance of false alarm, and provides a reliable fault reporting service. The SRA method is demonstrated on a real semiconductor manufacturing dataset. The effectiveness of SRA-based fault detection is evaluated using a time-series SR test and also using a post-process SR test. The time-series SR provides an early-stage fault detection service, so less energy and materials will be wasted by faulty processing. The post-process SR provides a fault detection service with higher reliability than the time-series SR, but with fault testing conducted only after each process run completes.
url http://europepmc.org/articles/PMC3995992?pdf=render
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AT conormcardle similarityratioanalysisforearlystagefaultdetectionwithopticalemissionspectrometerinplasmaetchingprocess
AT stephendaniels similarityratioanalysisforearlystagefaultdetectionwithopticalemissionspectrometerinplasmaetchingprocess
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