Job shop scheduling problem using hybrid ant colony optimization and genetic algorithm
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Abstract
Job-shop scheduling techniques play a significant role in various parallel applications.
An efficient job-shop scheduling technique not only provides high availability of
resources to users, but also enhances the performance of parallel machines. Job-shop
scheduling techniques are a typical NP-hard problem. Currently, numerous researchers
have solved job-shop scheduling problems by considering the well-known metaheuristic
techniques. These techniques are Genetic algorithm (GA), Particle swarm optimization
(PSO), Variable neighborhood search (VNS), Ant colony optimization (ACO), BAT algorithm
(BA), Artificial bee colony (ABC) etc. However, these techniques suffer from
one of these issues: premature convergence, poor convergence speed, initially selected
random solutions and stuck in local optima. To handle the issues associated with existing metaheuristics based job-shop scheduling
techniques, in this research work, a hybrid scheduling techniques is designed. Hybridization
of metaheuristic based job-shop scheduling techniques is achieved by integrating
the ACO with GA. It has an ability to overcome several issues associated with
existing techniques such as premature convergence, poor convergence speed, initially
selected random solutions and stuck in local optima issues.
