A Hybrid Genetic Algorithm for Parallel Machine Scheduling at Semiconductor Back-End Production
Adan, Jelle (Eindhoven University of Technology, Nexperia) | Adan, Ivo (Eindhoven University of Technology) | Akcay, Alp (Eindhoven University of Technology) | Dobbelsteen, Rick Van den (Nexperia) | Stokkermans, Joep (Nexperia)
This paper addresses batch scheduling at a back-end semiconductor plant of Nexperia. This complex manufacturing environment is characterized by a large product and batch size variety, numerous parallel machines with large capacity differences, sequence and machine dependent setup times and machine eligibility constraints. A hybrid genetic algorithm is proposed to improve the scheduling process, the main features of which are a local search enhanced crossover mechanism, two additional fast local search procedures and a user-controlled multi-objective fitness function. Testing with real-life production data shows that this multi-objective approach can strike the desired balance between production time, setup time and tardiness, yielding high-quality practically feasible production schedules.
Jun-20-2018
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