Publication | Closed Access
A stochastic programming model for emergency supply planning considering traffic congestion
48
Citations
38
References
2019
Year
Transport Network AnalysisEngineeringEmergency ManagementTraffic CongestionEmergency SupplyOperations ResearchEmergency LogisticsRisk ManagementLogisticsSystems EngineeringTransportation EngineeringStochastic Programming ModelTraffic Congestion EffectsEmergency PreparednessInteger ProgrammingEvacuation PlanningDisaster ManagementMeaningful GeneralizationMedicineDisaster Risk ReductionTransport ModellingEmergency Medicine
Traffic congestion is one key factor that delays emergency supply logistics after disasters, but it is seldom explicitly considered in previous emergency supply planning models. To fill the gap, we incorporate traffic congestion effects and propose a two-stage location-allocation model that facilitates the planning of emergency supplies pre-positioning and post-disaster transportation. The formulated mixed-integer nonlinear programming model is solved by applying the generalized Benders decomposition algorithm, and the suggested approach outperforms the direct solving strategy. With a case study on a hurricane threat in the southeastern USA, we illustrate that our traffic congestion incorporated model is a meaningful generalization of a previous emergency supply planning model in the literature. Finally, managerial insights about the supplies pre-positioning plan and traffic control policy are discussed.
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