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A simheuristic approach for the flexible job shop scheduling problem with stochastic processing times

Rylan H. Caldeira, A. Gnanavelbabu

2020SIMULATION38 citationsDOI

Abstract

In this work, we address the flexible job shop scheduling problem (FJSSP), which is a classification of the well-known job shop scheduling problem. This problem can be encountered in real-life applications such as automobile assembly, aeronautical, textile, and semiconductor manufacturing industries. To represent inherent uncertainties in the production process, we consider stochastic flexible job shop scheduling problem (SFJSSP) with operation processing times represented by random variables following a known probability distribution. To solve this stochastic combinatorial optimization problem we propose a simulation-optimization approach to minimize the expected makespan. Our approach employs Monte Carlo simulation integrated into a Jaya algorithm framework. Due to the unavailability of standard benchmark instances in SFJSSP, our algorithm is evaluated on an extensive set of well-known FJSSP benchmark instances that are extended to SFJSSP instances. Computational results demonstrate the performance of the algorithm at different variability levels through the use of reliability-based methods.

Topics & Concepts

Job shop schedulingComputer scienceUnavailabilityMathematical optimizationBenchmark (surveying)Scheduling (production processes)Flow shop schedulingJob shopFair-share schedulingEngineeringReliability engineeringMathematicsComputer networkScheduleOperating systemGeodesyQuality of serviceGeographyScheduling and Optimization AlgorithmsOptimization and Packing ProblemsAdvanced Manufacturing and Logistics Optimization