ÜRETİM SİSTEMLERİNDE KARMA VE SAF DAĞILIM MODELLERİNİN ETKİNLİK KARŞILAŞTIRILMASI
Abstract
In this study, a mixture distribution model was used when the server time
in the queuing system did not fit any known theoretical pure distribution. To
determine the performance of the mixture distribution, normal mixture distributions
and exponential mixture distributions model of the process time were used. Chisquare
test was applied to estimate the statistical distribution and parameters for the
server time. An empirical distribution was established when there was no known
theoretical pure distribution. However, when the empirical distribution is used, the
queuing system is tried to be represented by the normal mixture distribution
approach. Because the empirical distribution takes a long time to produce,
especially if there is a certain amount of data accumulation. The number of
components has been determined with the aid of P-P, Q-Q plot, Akaike and
Bayesian information criteria. After estimating the number of components, the
mean, standard deviation, and mixture proportion parameter of each component
were calculated using the Expectation-Maximization algorithm. The queuing times
calculated by normal mixture distribution and empirical distribution approaches
were compared with the theoretical results and their performance was evaluated.