Title of article
An application of principal component analysis and logistic regression to facilitate production scheduling decision support system: an automotive industry case
Author/Authors
Mehrjoo، Saeed نويسنده SM is a PhD student at Payme Noor University , , Bashiri، Mahdi نويسنده ,
Issue Information
فصلنامه با شماره پیاپی 20 سال 2013
Pages
12
From page
59
To page
70
Abstract
Production planning and control (PPC) systems have to deal with rising complexity and dynamics. The complexity of planning tasks is due to some existing multiple variables and dynamic factors derived from uncertainties surrounding the PPC. Although literatures on exact scheduling algorithms, simulation approaches, and heuristic methods are extensive in production planning, they seem to be inefficient because of daily fluctuations in real factories. Decision support systems can provide productive tools for production planners to offer a feasible and prompt decision in effective and robust production planning. In this paper, we propose a robust decision support tool for detailed production planning based on statistical multivariate method including principal component analysis and logistic regression. The proposed approach has been used in a real case in Iranian automotive industry. In the presence of existing multisource uncertainties, the results of applying the proposed method in the selected case show that the accuracy of daily production planning increases in comparison with the existing method
Journal title
Journal of Industrial Engineering International
Serial Year
2013
Journal title
Journal of Industrial Engineering International
Record number
1148743
Link To Document