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Kozłowski Edward (Lublin University of Technology, Poland), Terkaj Walter (National Research Council in Italy), Gola Arkadiusz (Lublin University of Technology, Poland), Hajduk Mikuláš (Technical University of Košice, Slovakia), Świć Antoni (Lublin University of Technology, Poland)
A Predictive Model of Multi-Stage Production Planning for Fixed Time Orders
Management and Production Engineering Review, 2014, vol. 5, nr 3, s. 23-32, rys., tab., bibliogr. 26 poz.
Planowanie produkcji, Modele matematyczne, Kontrola produkcji
Production planning, Mathematical models, Production control
The traditional production planning model based upon a deterministic approach is well described in the literature. Due to the uncertain nature of manufacturing processes, such model can however incorrectly represent actual situations on the shop floor. This study develops a mathematical modeling framework for generating production plans in a multistage manufacturing process. The devised model takes into account the stochastic model for predicting the occurrence of faulty products. The aim of the control model is to determine the number of products which should be manufactured in each planning period to minimize both manufacturing costs and potential financial penalties for failing to fulfill the order completely. (original abstract)
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