Title of article :
Three Hybrid Metaheuristic Algorithms for Stochastic Flexible Flow Shop Scheduling Problem with Preventive Maintenance and Budget Constraint
Author/Authors :
Raissi, sadigh Islamic Azad University - South Tehran Branch, Tehran, Iran , Rooeinfar, ramtin South Tehran Branch Islamic Azad University, Tehran, Iran , Ghezavati, vahid reza South Tehran Branch Islamic Azad University, Tehran, Iran
Abstract :
Stochastic flexible flow shop scheduling problem (SFFSSP) is one the main focus of researchers due to the complexity arises from inherent
uncertainties and also the difficulty of solving such NP-hard problems. Conventionally, in such problems each machine’s job process time
may encounter uncertainty due to their relevant random behaviour. In order to examine such problems more realistically, fixed interval
preventive maintenance (PM) and budget constraint are considered.PM activity is a crucial task to reduce the production efficiency. In the
current research we focused on a scheduling problem which a job is processed at the upstream stage and all the downstream machines get
busy or alternatively PM cost is significant, consequently the job waits inside the buffers and increases the associated holding cost. This
paper proposes a new more realistic mathematical model which considers both the PM and holding cost of jobs inside the buffers in the
stochastic flexible flow shop scheduling problem. The holding cost is controlled in the model via the budget constraint. In order to solve the
proposedmodel, three hybrid metaheuristic algorithms are introduced. They include a couple of well-known metaheuristic algorithms
which have efficient quality solutions in the literature. The two algorithms of them constructed byincorporationof the particle swarm
optimization algorithm (PSO) and parallel simulated annealing (PSA) methods under different random generation policies. The third one
enriched based on genetic algorithm (GA) with PSA. To evaluate the performance of the proposed algorithms, different numerical
examples are presented. Computational experiments revealed that the proposed algorithms embedboth desirable accuracy and CPU time.
Among them, the PSO-PSAП outperforms than other algorithms in terms of makespan and CPU time especially for large size problems.
Keywords :
Stochastic flexible flow shop , Budget constraint , Preventive maintenance , Genetic algorithm , Simulated annealing , Particle swarm optimization
Journal title :
Astroparticle Physics