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International Journal of Scientific and Engineering Research
ISSN Online 2229-5518
ISSN Print: 2229-5518 5    
Website: http://www.ijser.org
scirp IJSER >> Volume 2, Issue 5, May 2011 Edition
Decreasing Inventory Levels Fluctuations by Moving Horizon Control Method and Move Suppression in the Demand Network
Full Text(PDF, 3000)  PP.  
Author(s)
Mohammad Miranbeigi, Aliakbar Jalali
KEYWORDS
moving horizon control, production planning, supply chain management, move suppression term, inventory management ,demand network.
ABSTRACT
The significance of the basic idea implicit in the moving horizon control (MHC) has been recognized a long time ago in the operations management literature as a tractable scheme for solving stochastic multi period optimization problems, such as production planning and supply chain management, under the term moving horizon. In this paper, a moving horizon controller with move suppression term used for inventory management of the demand network (supply chain).
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