Estudo comparativo das aproximações baseadas no método de decomposição paramétrico para avaliar redes de filas de manufatura utilizando planejamento de experimentos
Abstract
This is a study of approximations based on parametric decomposition methods
used in open queueing networks for modeling discrete job-shop manufacturing systems. These
approximations play an important role in evaluating the performance of productive systems and
have proved effective in many situations. Besides, these approximations are relatively easy to
apply requiring fewer data compared to other methods because they use the average rate and SCV
(square coefficient of variation) as the only parameters to characterize the network arrival and
service processes. This work is aimed at analyzing and comparing several approximations since
they are not yet available in the literature. Hence, several network situations were tested in order
to identify the most adequate approximation for each situation. Firstly, a two-station network was
analyzed followed by the analysis of a five-station network and lastly, a real example of a
semiconductor plant, analyzed by Bitran e Tirupati (1988), was used. In order to reach these
goals, the state of the art of approximation methods to evaluate the performance of open queueing
networks was studied, and the approximations were compared using the experiment planning
technique, important factors for building network configuration and data analysis The findings of
this work demonstrate that approximations can be highly efficient to evaluate the performance of
discrete job-shop manufacturing systems. Regardless of the configurations studied, it is worth
mentioning that approximations 3 and 2, in general, showed the best results if compared to the
other values obtained from simulations to evaluate the performance of open queueing networks,
OQN,. The other approximations tended to overestimate E(Lj) when the number of stations is
higher. This study intends to contribute to the development of computing systems in order to
support project decisions and the planning and control of discrete manufacturing systems using
approximations based on the parametric decomposition method