Profile control chart based on maximum entropy
Monitoring a process over time is so important in manufacturing processes to reduce the waste of money and time. Some charts as Shewhart, CUSUM, and EWMA are common to monitor a process with a single intended attribute which is used in different kinds of processes with various ranges of shifts. In s...
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Zusammenfassung: | Monitoring a process over time is so important in manufacturing processes to
reduce the waste of money and time. Some charts as Shewhart, CUSUM, and EWMA
are common to monitor a process with a single intended attribute which is used
in different kinds of processes with various ranges of shifts. In some cases,
the process quality is characterized by different types of profiles. The
purpose of this article is to monitor profile coefficients instead of a process
mean. In this paper, two methods are proposed for monitoring the intercept and
slope of the simple linear profile, simultaneously. In this regard, two methods
are compared here. The first one is the linear regression, and the one is the
maximum entropy principle. The T2 Hotelling statistics is used to transfer two
coefficients to a scalar. A simulation study is applied to compare the two
methods in terms of the second type of error and average run length. Finally,
two real examples are presented to demonstrate the applicability of the
proposed chart. The first one is about semiconductors, and the second one is
about pharmaceutical production processes. The performance of the methods is
relatively similar. The maximum entropy plays an important role in correctly
identifying differences in the pharmaceutical example, while linear regression
did not correctly detect these changes. |
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DOI: | 10.48550/arxiv.2012.14289 |