Abstract
A Hybrid Genetic and Gradient Based Solution Procedure for Solving a Supply Chain Model
Chaher ALZAMAN, Amar RAMUDHIN, Akif A. BULGAK
Abstract : This work aims at solving a challenging MIP model for the design of supply chains with
nonlinear functions that represent the cost of quality. The model minimizes the cost of
quality along with production and transportation costs while deciding which production
lines to open or close. To solve the model, a genetic algorithm is used coupled with a
gradient search methodology. The overall model is solved and results are presented and
discussed. The results pave the way for many future possibilities. Now that the cost or
quality is integrated as a cost parameter in a supply chain network model, intelligent
decisions could be made to reduce quality non-conformance cost while maintaining
moderate operational costs. It can also be used both as an incentive and a way to educate
subcontractors on the benefits of operating more efficiently in a collaborative supplier
relationship program.
Keywords : nonlinear Programming ; Supply Chain Network Design ; Cost of Quality ; Genetic Algorithm ; Gradient Search Method
Year : 2011
Issue : 3
Volume : 4
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