Publication | Closed Access
Multi-objective analysis of an integrated supply chain scheduling problem
53
Citations
31
References
2011
Year
Supply Chain OptimizationEngineeringIndustrial EngineeringTotal Distribution CostsOperations ResearchMulti-objective AnalysisGenetic AlgorithmSystems EngineeringSupply ChainLogisticsHybrid Optimization TechniqueLogistics ModelCombinatorial OptimizationIntegrated ProductionIntelligent OptimizationSupply Chain ManagementProduction SchedulingBusinessVehicle Routing Problem
Abstract We study the problem of minimising the total weighted tardiness and total distribution costs in an integrated production and distribution environment. Orders are received by a manufacturer, processed on a single production line, and delivered to customers by capacitated vehicles. Each order (job) is associated with a customer, weight (priority), processing time, due time, and size (volume or storage space required in the transportation unit). A mathematical model is presented in which a number of weighted linear combinations of the objectives are used to aggregate both objectives into a single objective. Because even the single objective problem is NP-hard, different heuristics based on a genetic algorithm (GA) are developed to further approximate a Pareto-optimal set of solutions for our multi-objective problem. Keywords: supply chain managementheuristicsmulti-criteria decision makinggenetic algorithmsmath programming
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