Publication | Open Access
A Statistical Comparison of Metaheuristics for Unrelated Parallel Machine Scheduling Problems with Setup Times
10
Citations
39
References
2022
Year
Mathematical ProgrammingEngineeringIndustrial EngineeringComputational ComplexityOptimal MakespanParallel MetaheuristicsOperations ResearchGenetic AlgorithmSystems EngineeringParallel ComputingCombinatorial OptimizationUnrelated MachinesComputer EngineeringScheduling (Computing)Computer ScienceScheduling AnalysisScheduling ProblemSetup TimesProduction SchedulingStatistical ComparisonScheduling (Production Processes)Parallel Programming
Manufacturing scheduling aims to optimize one or more performance measures by allocating a set of resources to a set of jobs or tasks over a given period of time. It is an area that considers a very important decision-making process for manufacturing and production systems. In this paper, the unrelated parallel machine scheduling problem with machine-dependent and job-sequence-dependent setup times is addressed. This problem involves the scheduling of tasks on unrelated machines with setup times in order to minimize the makespan. The genetic algorithm is used to solve small and large instances of this problem when processing and setup times are balanced (Balanced problems), when processing times are dominant (Dominant P problems), and when setup times are dominant (Dominant S problems). For small instances, most of the values achieved the optimal makespan value, and, when compared to the metaheuristic ant colony optimization (ACOII) algorithm referred to in the literature, it was found that there were no significant differences between the two methods. However, in terms of large instances, there were significant differences between the optimal makespan obtained by the two methods, revealing overall better performance by the genetic algorithm for Dominant S and Dominant P problems.
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