Author/Authors :
Niaki، S.T.A نويسنده , , Khedmati، M. نويسنده ,
Abstract :
In multi-attribute process monitoring, when a control chart signals an out-of-control condition
indicating the existence of a special cause, knowing when the process has really changed (the change
point) accelerates the identification of the source of the special cause and makes the corrective measures
to be employed sooner. This, of course, results in a considerable amount of savings in time and money.
Since many real world multi-attribute processes are Poisson and most process changes are step-change,
a new method is proposed, in this paper, to derive the maximum likelihood estimator of the time of a
step-change in the mean vector of multivariate Poisson processes. In this method, two transformations
are first employed to almost remove the inherent skewness involved in multi-attribute processes and
make them almost multivariate normal, and also to almost diminish correlations between the attributes.
Then, a T 2 control chart is employed for out-of-control detection and a maximum likelihood estimator
is used to estimate the change point. The performance of the proposed methodology is illustrated using
some simulation experiments in which we show that the proposed procedure is relatively accurate and
reliable in detecting and estimating the change point.