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A Pareto approach to multi-objective flexible job-shop scheduling problem using particle swarm optimization and local search

机译:粒子群优化和局部搜索的多目标柔性作业车间调度问题的帕累托方法

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摘要

The job-shop scheduling problem is one of the most arduous combinatorial optimization problems. Flexible job-shop problem is an extension of the job-shop problem that allows an operation to be processed by any machine from a given set along different routes. This paper present a new approach based on a hybridization of the particle swarm and local search algorithm to solve the multi-objective flexible job-shop scheduling problem. The particle swarm optimization is a highly efficient and a new evolutionary computation technique inspired by birds' flight and communication behaviors. The multi-objective particle swarm algorithm is applied to the flexible job-shop scheduling problem based on priority. Also the presented approach will be evaluated for their efficiency against the results reported for similar algorithms (weighted summation of objectives and Pareto approaches). The results indicate that the proposed algorithm satisfactorily captures the multi-objective flexible job-shop problem and competes well with similar approaches.
机译:车间调度问题是最艰巨的组合优化问题之一。灵活的作业车间问题是作业车间问题的扩展,它允许任意机器从给定集合中的任何机器沿着不同的路线来处理操作。本文提出了一种基于粒子群算法与局部搜索算法混合的新方法,解决了多目标柔性作业车间调度问题。粒子群优化是一种高效的新技术,它是一种新的进化计算技术,受到鸟类的飞行和交流行为的启发。将多目标粒子群算法应用于基于优先级的柔性作业车间调度问题。同样,将针对类似算法(目标和Pareto方法的加权总和)报告的结果,评估所提出方法的效率。结果表明,该算法能够较好地捕获多目标柔性作业车间问题,并且与同类方法具有很好的竞争性。

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