Component Partitioning Under Demand and Capacity Uncertainty in Printed Circuit Board Assembly |
| |
Authors: | Wei-Liang Lin and Valerie Tardif |
| |
Affiliation: | (1) Graduate Program in Operations Research and Industrial Engineering, Department of Mechanical Engineering, The University of Texas at, Austin |
| |
Abstract: | This paper considers the problem of configuring a printed circuit board (PCB) assembly line experiencing uncertainty in demand and capacity. The PCB assembly process involves a single line of automatic placement machines, a variety of board types, and a number of component types. The line is set up only once, at the beginning of a production cycle, to eliminate setups between board types. Using this strategy, the line therefore can assemble all different types of PCBs without feeder changes. The problem then becomes to partition component types to the different machines in the hope of processing all boards quickly with a good workload balance. In this paper, the board demands and machine breakdowns are random but follow some probability distribution, which can be predicted from past observations of the system. We formulate this problem as a stochastic mixed-integer programming formulation with the objective of minimizing the expected makespan for assembling all PCBs during a production cycle. The results obtained indicate significant improvement over the existing methods. We hope that this research will provide more PCB assembly facilities with models and techniques to hedge against variable forecasts and capacity plans |
| |
Keywords: | assembly line balancing hedging against uncertainty stochastic programming |
本文献已被 SpringerLink 等数据库收录! |
|