Title :
Supply chain planning with integrated decision making in resource allocation
Author_Institution :
IESEG Sch. of Manage., Paris, France
Abstract :
This study develops a mixed integer nonlinear programming (MINLP) model to plan supply chains by dealing with resource allocation. The model considers resource allocation decisions at both the strategic and tactic levels, and involves three supply chain stages: supply, production, and distribution and their interactions. This formulation is motivated by the importance of simultaneously dealing with decisions at two levels and systematically addressing the three stages. The model deals with multicommodity, instead of a single product, supply chain planning to meet diverse customer requirements. Along with the classical constraints considered in the literature, constraints related to product structures, facility pairwise relationships, and supplier priority are identified and formulated. To solve such a highly constrained, large scale MINLP model, we develop an approach based on genetic algorithm (GA). An illustrative example not only demonstrates the proposed MINLP model for planning supply chains but also shows the advantage of GA-based solving approach.
Keywords :
customer satisfaction; decision making; integer programming; nonlinear programming; planning; resource allocation; supply chain management; GA-based solving approach; MINLP model; customer requirement; facility pairwise relationship; genetic algorithm; integrated decision making; mixed integer nonlinear programming model; multicommodity; product structure; resource allocation decision; strategic level; supplier priority; supply chain planning; supply chain stage; tactic level; Biological cells; Planning; Resource management; Sociology; Statistics; Supply chains; Supply chain planning; product structure; resource allocation; supplier priority;
Conference_Titel :
Industrial Engineering and Operations Management (IEOM), 2015 International Conference on
Conference_Location :
Dubai
Print_ISBN :
978-1-4799-6064-4
DOI :
10.1109/IEOM.2015.7093950