Title of article :
A genetic approach to two-phase optimization of dynamic supply chain scheduling
Author/Authors :
Alebachew D. Yimer *، نويسنده , , Kudret Demirli، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2010
Abstract :
In today’s competitive environment, agility and leanness have become two crucial strategic concerns for
many manufacturing firms in their efforts to broaden market share. Recently, the build-to-order (BTO)
manufacturing strategy is becoming a popular operation strategy to achieve both in a mass-scale customization
process. BTO system combines the characteristics of make-to-order strategy with a forecast driven
make-to-stock strategy. As a means to improve customer responsiveness, customized products are
assembled according to specific orders while standard components are pre-manufactured based on
short-term forecasts. Planning of the two subsystems using a two-phase sequential approach offers both
operational and modeling incentives. In this paper, we formulate a two-phase mixed integer linear programming
(MILP) model for material procurement, components fabrication, product assembly and distribution
scheduling of a BTO supply chain system. In the proposed approach, the entire problem is first
decomposed into two subsystems and evaluated sequentially. The first phase deals with assembling
and distribution scheduling of customizable products, while the second phase addresses fabrication
and procurement planning of components and raw-materials. The objective of both models is to minimize
the aggregate costs associated with each subsystem, while meeting customer service requirements.
The search space for the first phase problem involves a complex landscape with too many candidate solutions.
A genetic algorithm based solution procedure is proposed to solve the sub-problem efficiently.
Keywords :
Supply chain scheduling , Mixed integer programming , Build-to-order , agile manufacturing , Genetic Algorithm
Journal title :
Computers & Industrial Engineering
Journal title :
Computers & Industrial Engineering