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首页> 外文期刊>Evolutionary Computation, IEEE Transactions on >Two-Phase Genetic Local Search Algorithm for the Multimode Resource-Constrained Project Scheduling Problem
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Two-Phase Genetic Local Search Algorithm for the Multimode Resource-Constrained Project Scheduling Problem

机译:多模式资源受限项目调度问题的两阶段遗传局部搜索算法

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摘要

In this paper, the resource-constrained project scheduling problem with multiple execution modes for each activity is explored. This paper aims to find a schedule of activities such that the makespan of the schedule is minimized subject to the precedence and resource constraints. We present a two-phase genetic local search algorithm that combines the genetic algorithm and the local search method to solve this problem. The first phase aims to search globally for promising areas, and the second phase aims to search more thoroughly in these promising areas. A set of elite solutions is collected during the first phase, and this set, which acts as the indication of promising areas, is utilized to construct the initial population of the second phase. By suitable applications of the mutation with a large mutation rate, the restart of the genetic local search algorithm, and the collection of good solutions in the elite set, the strength of intensification and diversification can be properly adapted and the search ability retained in a long term. Computational experiments were conducted on the standard sets of project instances, and the experimental results revealed that the proposed algorithm was effective for both the short-term (with 5000 schedules being evaluated) and the long-term (with 50000 schedules being evaluated) search in solving this problem.
机译:本文探讨了针对每个活动具有多种执行模式的资源受限的项目调度问题。本文旨在找到一种活动时间表,以便在优先级和资源限制的前提下,使时间表的生成时间最小化。我们提出了一种两阶段遗传局部搜索算法,该算法结合了遗传算法和局部搜索方法来解决此问题。第一阶段的目标是在全球范围内寻找有前途的领域,第二阶段的目标是在这些有前途的领域中进行更彻底的搜索。在第一阶段收集了一组精英解决方案,该集合用作有前途的领域的指示,被用于构建第二阶段的初始种群。通过适当地使用突变率大的突变,重新启动遗传局部搜索算法以及在精英集中收集好的解决方案,可以适当地增强集约化和多样化的强度,并长期保持搜索能力术语。在项目实例的标准集合上进行了计算实验,实验结果表明,该算法对于短期(评估5000个进度表)和长期(评估50000个进度表)搜索都是有效的解决这个问题。

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