Title :
Capacity planning under demand uncertainty for semiconductor manufacturing
Author :
Hood, Sarah Jean ; Bermon, Stuart ; Barahona, Francisco
Author_Institution :
IBM Microelectron. Div., Hopewell Junction, NY, USA
fDate :
5/1/2003 12:00:00 AM
Abstract :
In the semiconductor industry, capacity planning, the calculation of number of tools needed to manufacture forecasted product demands, is difficult because of sensitivity to product mix and uncertainty in future demand. Planning for a single demand profile can result in a large gap between planned capacity and actual capability when the realized product mix turns out differently from the one planned. This paper presents a method which accepts this uncertainty and uses stochastic integer programming to find a tool set robust to changes in demand. It considers a set of possible, discrete demand scenarios with associated probabilities, and determines the tools to purchase, under a budget constraint, to minimize weighted average unmet demand. The resulting robust tool set deals well with all the scenarios at no or minimal additional cost compared to that for a single demand profile. We also discuss the modifications of conventional business processes, needed to implement this method for dealing explicitly with uncertainty in demand.
Keywords :
assembly planning; integer programming; integrated circuit manufacture; production control; stochastic programming; uncertainty handling; actual capability; budget constraint; capacity planning; demand uncertainty; discrete demand scenarios; forecasted product demands; planned capacity; robust tool set; semiconductor manufacturing; single demand profile; stochastic integer programming; weighted average unmet demand; Capacity planning; Demand forecasting; Discrete event simulation; Linear programming; Production; Robustness; Semiconductor device manufacture; Stochastic processes; Throughput; Uncertainty;
Journal_Title :
Semiconductor Manufacturing, IEEE Transactions on
DOI :
10.1109/TSM.2003.811894