Title of article
Using Minimum Quantization Error chart for the monitoring of process states in multivariate manufacturing processes
Author/Authors
Jian-Bo Yu a، نويسنده , , *، نويسنده , , Shijin Wang b، نويسنده , , 1، نويسنده ,
Issue Information
ماهنامه با شماره پیاپی سال 2009
Pages
13
From page
1300
To page
1312
Abstract
The need for multivariate statistical process control (MSPC) becomes more important as several variables
should be monitored simultaneously. MSPC is implemented using a variety of techniques including neural
networks (NNs). NNs have excellent noise tolerance in real time, requiring no hypothesis on statistical
distribution of monitored processes. This feature makes NNs promising tools used for monitoring process
changes. However, major NNs applied in SPC are based on supervised learning, which limits their wide
applications. In the paper, a Self-Organizing Map (SOM)-based process monitoring approach is proposed
for enhancing the monitoring of manufacturing processes. It is capable to provide a comprehensible and
quantitative assessment value for current process state, which is achieved by the Minimum Quantization
Error (MQE) calculation. Based on these MQE values over time series, an MQE chart is developed for monitoring
process changes. The performance of MQE chart is analyzed in a bivariate process under the
assumption that the predictable abnormal patterns are not available. The performance of MQE is further
evaluated in a semiconductor batch manufacturing process. The experimental results indicate that MQE
charts can become an effective monitoring and analysis tool for MSPC.
Keywords
Input features , Statistical process control , Manufacturing process monitoring , Self-organizing map , Multivariate manufacturing process control
Journal title
Computers & Industrial Engineering
Serial Year
2009
Journal title
Computers & Industrial Engineering
Record number
925800
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