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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >An effective shuffled frog-leaping algorithm for hybrid flow-shop scheduling with multiprocessor tasks
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An effective shuffled frog-leaping algorithm for hybrid flow-shop scheduling with multiprocessor tasks

机译:具有多处理器任务的混合流水车间调度的一种有效的改组蛙跳算法

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摘要

As a strongly NP-hard problem, the hybrid flow-shop problem with multiprocessor tasks (HFSPMT) has gained increasing attention due to its academic significance and application value. In this paper, an effective algorithm based on the shuffled frog leaping algorithm (SFLA) is proposed for solving the HFSPMT. First, three decoding methods are used together to decode a solution to a better schedule. Especially, the forward scheduling decoding method is employed, aiming at narrowing the idle time between consecutive operations in the processor as well as increasing the flexibility in selecting processors to schedule the following operations. Second, a bilevel crossover is designed to make each individual share the good "meme" within each memeplex and exchange the good "meme" between different memeplexes. Third, multiple local search operators are used in an effective way by employing the meta-Lamarckian learning strategy to enhance the local exploitation ability. Meanwhile, the use of crossover and local search together in the SFLA can enrich the memetic search behavior and balance the exploration and exploitation abilities. In addition, the effect of parameter setting of the algorithm is investigated based on the Taguchi method of design of experiment, and suitable values are suggested for the parameters. Extensive testing results based on two types of well-known benchmarks are provided. And the effectiveness of the proposed algorithm is demonstrated by the comparisons with some existing algorithms.
机译:作为一个强NP难题,具有多处理器任务的混合流水车间问题(HFSPMT)由于其学术意义和应用价值而受到越来越多的关注。提出了一种基于改组蛙跳算法的有效算法来求解HFSPMT。首先,将三种解码方法一起用于对解决方案进行解码以达到更好的调度。特别地,采用前向调度解码方法,旨在缩小处理器中连续操作之间的空闲时间,并增加选择处理器来调度后续操作的灵活性。其次,设计了双层交换,以使每个人在每个Memeplex中共享良好的“ Meme”,并在不同Memeplex之间交换良好的“ Meme”。第三,通过采用元拉马克学习策略来提高本地开发能力,有效地利用了多个本地搜索算子。同时,在SFLA中结合使用交叉和本地搜索可以丰富模因搜索行为并平衡探索和开发能力。此外,基于实验设计的田口方法,研究了算法参数设置的效果,并提出了合适的参数值。提供了基于两种著名基准的广泛测试结果。通过与现有算法的比较证明了该算法的有效性。

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