Phase II Non-parametric and Semi-parametric Profile Monitoring
Abstract
The emergence of new technologies, as well as the availability of large
amounts of information related to quality measurements, have shed the light to a new
type of response characteristic called profile. Profiles are important when the quality
of a large data process is represented by a relationship between the dependent variable
and one or more independent variables. They are fitted using regression techniques
and their performances are monitored by statistical process control (SPC). Most of the
previous studies focused on monitoring the profiles assuming that, the model is
correct with no model misspecification (parametric models). However, the parametric
models may not perfectly fit the relationship of the dependent variable with the
independent variable(s). Thus, this study considers profile monitoring via two nonparametric techniques and two semi-parametric techniques. The first non-parametric
technique is the fitted values to the data, while the second is the fitted values to the
residuals obtained from the parametric fit. Moreover, the first semi-parametric
technique combines both parametric and of the non-parametric fits to the raw data
(model robust regression technique 1 (MRR1), while the second one combines both
parametric fit to the raw data and the non-parametric fit to the residuals obtained from
the parametric fit (model robust regression technique 2 (MRR2). Also, according to
the flexibility of linear mixed models (LMM), it was incorporated into different
model fits. Thus, the initial portion of this research focuses on two methods for Phase
II analysis, namely, MCUSUM and MEWMA statistics, to promote monitoring of the
slope of LMM. Simulation study and real-data applications were carried out to compare the performances of the parametric charts with the proposed charts based on
Average Run Length (ARL), standard deviation run length (SDRL) and Average
Time to Signal (ATS) considering different profile sizes, sample sizes, and level of
misspecifications for correlated and uncorrelated data. Furthermore, the overall
abilities of the charts were evaluated by extra quadratic loss (EQL) criterion. The
research demonstrates that the two proposed semi-parametric techniques had the best
performances and higher sensitivities in detecting shifts.
DOI/handle
http://hdl.handle.net/10576/17739Collections
- Mathematics, Statistics & Physics [33 items ]