Title of article :
A One-Stage Two-Machine Replacement Strategy Based on the Bayesian Inference Method
Author/Authors :
Fallah Nezhad، Mohammad Saber نويسنده , , Akhavan Niaki، Seyed Taghi نويسنده , , Eshraghniaye Jahromi,، Abdolhamid نويسنده Associate Professor, Industrial Engineering, Sharif University of Technology, Iran, Tehran, ,
Issue Information :
فصلنامه با شماره پیاپی سال 2007
Abstract :
In this research, we consider an application of the Bayesian Inferences in machine replacement
problem. The application is concerned with the time to replace two machines producing a
specific product; each machine doing a special operation on the product when there are
manufacturing defects because of failures. A common practice for this kind of problem is to fit
a single distribution to the combined defect data, usually a distribution with an increasing
hazard rate. While this may be convenient, it does not adequately capture the fact that there are
two different underlying causes of failures. A better approach is to view the defect as arising
from a mixture population: one due to the first machine failures and the other due to the second
one. This allows one to estimate the various parameters of interest including the mixture
proportion and the distribution of time between productions of defective products for each
machine, separately. To do this, first we briefly introduce the data augmentation method for
Bayesian inferences in the context of the finite mixture models. Then, we discuss the analysis of
time-to-failure data and propose an optimal decision-making procedure for machine
replacement strategy. In order to demonstrate the application of the proposed method we
provide a numerical example.
Journal title :
Journal of Industrial and Systems Engineering (JISE)
Journal title :
Journal of Industrial and Systems Engineering (JISE)