no-idle time scheduling of open shops: modeling and metaheuristic solution methods

Authors

bahman naderi

vahid roshanaei

abstract

in some industries as foundries, it is not technically feasible to interrupt a processor between jobs. this restriction gives rise to a scheduling problem called no-idle scheduling. this paper deals with scheduling of no-idle open shops to minimize maximum completion time of jobs, called makespan. the problem is first mathematically formulated by three different mixed integer linear programming models. since open shop scheduling problems are np-hard, only small instances can be solved to optimality using these models. thus, to solve large instances, two meta-heuristics based on simulated annealing and genetic algorithms are developed. a complete numerical experiment is conducted and the developed models and algorithms are compared. the results show that genetic algorithm outperforms simulated annealing.

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Journal title:
international journal of supply and operations management

ISSN 2383-1359

volume 1

issue 1 2014

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