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A multi-objective particle swarm optimization for dual-resource constrained shop scheduling with resource flexibility

机译:具有资源灵活性的双资源约束车间调度的多目标粒子群算法

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In this paper, a novel multi-objective hybrid particle swarm algorithm is proposed to solve the dual-resource constrained shop scheduling problem with minimizing production period and production cost being the objectives. First, particles are represented and updated directly in the discrete domain. Then simulated annealing with variable neighborhoods structure is introduced to improve the local search ability. Third, an external archive based on Pareto-dominance is applied to store the non-dominated solutions. The computational results are provided and compared with existing methods. It is shown that the proposed algorithm achieves better performance in both convergence and diversity.
机译:本文提出了一种新型多目标混合粒子群算法,解决双资源受限的店铺调度问题,最大限度地减少生产期和生产成本是目标。首先,将粒子表示并直接在离散域中更新。然后引入了具有可变邻域结构的模拟退火,以提高本地搜索能力。第三,应用基于帕累托 - 优势的外部档案来存储非主导的解决方案。提供计算结果并与现有方法进行比较。结果表明,该算法在融合和多样性中实现了更好的性能。

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