Title of article :
Semiconductor lot allocation using robust optimization
Author/Authors :
Tsan Sheng Ng، نويسنده , , Yang Sun، نويسنده , , John Fowler، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
In this work, the problem of allocating a set of production lots to satisfy customer orders is considered. This research is of relevance to lot-to-order matching problems in semiconductor supply chain settings. We consider that lot-splitting is not allowed during the allocation process due to standard practices. Furthermore, lot-sizes are regarded as uncertain planning data when making the allocation decisions due to potential yield loss. In order to minimize the total penalties of demand un-fulfillment and over-fulfillment, a robust mixed-integer optimization approach is adopted to model is proposed the problem of allocating a set of work-in-process lots to customer orders, where lot-sizes are modeled using ellipsoidal uncertainty sets. To solve the optimization problem efficiently we apply the techniques of branch-and-price and Benders decomposition. The advantages of our model are that it can represent uncertainty in a straightforward manner with little distributional assumptions, and it can produce solutions that effectively hedge against the uncertainty in the lot-sizes using very reasonable amounts of computational effort.
Keywords :
Robust optimization , Generalized Benders , Branch-and-price , Semiconductor supply chain , Lot assignment , Uncertainty modeling
Journal title :
European Journal of Operational Research
Journal title :
European Journal of Operational Research