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Decomposition-based multi-objective optimization for energy-aware distributed hybrid flow shop scheduling with multiprocessor tasks

机译:基于分解的多目标优化,用于多处理器任务的能量感知分布式混合流程流程厅调度

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This paper addresses the Energy-Aware Distributed Hybrid Flow Shop Scheduling Problem with Multiprocessor Tasks (EADHFSPMT) by considering two objectives simultaneously, i.e., makespan and total energy consumption. It consists of three sub-problems, i.e., job assignment between factories, job sequence in each factory, and machine allocation for each job. We present a mixed inter linear programming model and propose a Novel Multi-Objective Evolutionary Algorithm based on Decomposition (NMOEA/D). We specially design a decoding scheme according to the characteristics of the EADHFSPMT. To initialize a population with certain diversity, four different rules are utilized. Moreover, a cooperative search is designed to produce new solutions based on different types of relationship between any solution and its neighbors. To enhance the quality of solutions, two local intensification operators are implemented according to the problem characteristics. In addition, a dynamic adjustment strategy for weight vectors is designed to balance the diversity and convergence, which can adaptively modify weight vectors according to the distribution of the non-dominated front. Extensive computational experiments are carried out by using a number of benchmark instances, which demonstrate the effectiveness of the above special designs. The statistical comparisons to the existing algorithms also verify the superior performances of the NMOEA/D.
机译:本文通过同时考虑两个目标来解决多处理器任务(EADHFSPMT)的能量感知分布式混合液流量店调度问题,即Makespan和总能耗。它由三个子问题,即工厂之间的作业分配,每个工厂的作业序列,以及每项作业的机器分配。我们提出了一种基于分解(NMOEA / D)的新型多目标进化算法。我们特别设计了根据EADHFSPMT的特性进行解码方案。初始化具有某些多样性的人口,使用了四种不同的规则。此外,协作搜索旨在基于任何解决方案及其邻居之间的不同类型的关系来生产新的解决方案。为提高解决方案的质量,根据问题特征实施两个局部强化运营商。此外,重量向量的动态调整策略旨在平衡多样性和收敛,这可以根据非主导前沿的分布自适应地修改权重向量。通过使用许多基准实例进行广泛的计算实验,这证明了上述特殊设计的有效性。对现有算法的统计比较也验证了NMOEA / D的优异性能。

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