Decision support to product configuration considering component replenishment uncertainty: A stochastic programming approach
作者:
Highlights:
• Stochastic programming used to formulate product configuration decisions under uncertainty.
• A pre-purchasing strategy is proposed to shorten the delivery times of products.
• Lagrangian relaxation is developed to solve the stochastic model.
• The effectiveness of the stochastic model is demonstrated through case studies.
摘要
Product configuration is to make decisions on component selections and combination to constitute a customized product under mass customization production. However, the uncertainties (such as component supplies) in product configuration setting are not considered in the existing product configurators. To handle the uncertainty in component replenishment lead-time, a new stochastic decision model is proposed in this paper using two-stage stochastic programming approach. Further, a pre-procuring strategy for component supply is employed to reduce total configuration costs and shorten the delivery date of customized products. The stochastic decision model for product configuration is solved by using Lagrangian relaxation algorithm. The effectiveness of the stochastic decision model is demonstrated through case studies from both computer configuration and ranger drilling machine configuration. Computational comparisons with a commercial solver (CPLEX) indicate that the proposed stochastic decision model provides competitive solution results.
论文关键词:Product configuration decisions,Stochastic programming,Mass customization,Lagrangian relaxation
论文评审过程:Received 7 May 2017, Revised 20 November 2017, Accepted 21 November 2017, Available online 22 November 2017, Version of Record 12 December 2017.
论文官网地址:https://doi.org/10.1016/j.dss.2017.11.004