Title of article :
An Efficient Bi-Objective Genetic Algorithm for the Single Batch- Processing Machine Scheduling Problem with Sequence-Dependent Family Setup Time and Non-Identical Job Sizes
Author/Authors :
rezaian, javad Department of Industrial Engineering - Mazandaran University of Science and Technology , zarook, yaser Department of Industrial Engineering - Mazandaran University of Science and Technology
Pages :
14
From page :
65
To page :
78
Abstract :
This paper considers the problem of minimizing make-span and maximum tardiness simultaneously for scheduling jobs under non-identical job sizes, dynamic job arrivals, incompatible job families, and sequence-dependent family setup time on the single batch- processor, where split size of jobs is allowed between batches. At first, a new Mixed Integer Linear Programming (MILP) model is proposed for this problem; then, it is solved by 􀟝-constraint method. Since this problem is NP-hard, a bi-objective genetic algorithm (BOGA) is offered for real-sized problems. The efficiency of the proposed BOGA is evaluated to be compared with many test problems by 􀟝-constraint method based on performance measures. The results show that the proposed BOGA is found to be more efficient and faster than the 􀟝-constraint method in generating Pareto fronts in most cases.
Keywords :
Batch Processing , Incompatible Job Family , Release Date , Split Job Size , Family Setup Time
Journal title :
Astroparticle Physics
Serial Year :
2018
Record number :
2435703
Link To Document :
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