Title of article :
Step change point estimation of the first-order autoregressive autocorrelated simple linear proles
Author/Authors :
Baradaran Kazemzadeh, R Department of Industrial Engineering - Faculty of Engineering - Tarbiat Modares University, Tehran, Iran , Amiri, A Department of Industrial Engineering - Faculty of Engineering - Shahed University, Tehran, Iran , Mirbeik, H Department of Industrial Engineering - Faculty of Engineering - Tarbiat Modares University, Tehran, Iran
Abstract :
In most researches in area of prole monitoring, it is assumed that observations
are independent of each other, whereas this assumption is usually violated in practice;
observations are autocorrelated. The control charts are the most important tools of the
statistical process control which are used to monitor the processes over time. The control
charts usually signal the out-of-control status of the process with a time delay. While
knowing real-time of the change (change point), one can achieve great savings on time and
expenses. In this paper, the estimation of the change point in simple linear proles with
AR(1) autocorrelation structure within each prole is considered. In the proposed method,
by acquiring the joint probability density function of the autocorrelated observations, the
maximum likelihood estimation method is applied to estimate the step change point. Here,
we specically focus on Phase II and compare the performance of the proposed estimator
with the existing estimators in the literature through simulation studies. In addition, the
application of the proposed estimator in comparison with the two estimators is illustrated
through a real case. The results show the better performance of the proposed estimator.
Keywords :
Phase II , AR(1) , Step change point , Autocorrelation
Journal title :
Astroparticle Physics