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An effective approach for the dual-resource flexible job shop scheduling problem considering loading and unloading

Xiuli Wu, Peng Junjian, Xiao Xiao, Shaomin Wu

2020Journal of Intelligent Manufacturing71 citationsDOIOpen Access PDF

Abstract

Abstract Many manufacturing systems need more than one type of resource to co-work with. Commonly studied flexible job shop scheduling problems merely consider the main resource such as machines and ignore the impact of other types of resource. As a result, scheduling solutions may not put into practice. This paper therefore studies the dual resource constrained flexible job shop scheduling problem when loading and unloading time (DRFJSP-LU) of the fixtures is considered. It formulates a multi-objective mathematical model to jointly minimize the makespan and the total setup time. Considering the influence of resource requirement similarity among different operations, we propose a similarity-based scheduling algorithm for setup-time reduction (SSA4STR) and then an improved non-dominated sorting genetic algorithm II (NSGA-II) to optimize the DRFJSP-LU. Experimental results show that the SSA4STR can effectively reduce the loading and unloading time of fixtures while ensuring a level of makespan. The experiments also verify that the scheduling solution with multiple resources has a greater guiding effect on production than the scheduling result with a single resource.

Topics & Concepts

Job shop schedulingScheduling (production processes)Computer scienceFlow shop schedulingMathematical optimizationDynamic priority schedulingFair-share schedulingRate-monotonic schedulingDistributed computingGenetic algorithm schedulingJob shopSortingAlgorithmMathematicsScheduleOperating systemScheduling and Optimization AlgorithmsAdvanced Manufacturing and Logistics OptimizationAssembly Line Balancing Optimization