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Search-Based Techniques Applied to Optimization of Project Planning for a Massive Maintenance Project

机译:基于搜索技术应用于大规模维护项目的项目规划优化

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This paper evaluates the use of three different search-based techniques, namely genetic algorithms, hill climbing and simulated annealing, and two problem representations, for planning resource allocation in large massive maintenance projects. In particular, the search-based approach aims to find an optimal or near optimal order in which to allocate work packages to programming teams, in order to minimize the project duration. The approach is validated by an empirical study of a large, commercial Y2K massive maintenance project, which compares these techniques with each other and with a random search (to provide base line comparison data). Results show that an ordering-based genome encoding (with tailored cross over operator) and the genetic algorithm appear to provide the most robust solution, though the hill climbing approach also performs well. The best search technique results reduce the project duration by as much as 50%.
机译:本文评估了三种不同的搜索技术,即遗传算法,爬山和模拟退火以及两个问题表示,用于大型大规模维护项目中的规划资源分配。特别是,基于搜索的方法旨在找到最佳或近最佳顺序,用于将工作包分配给编程团队,以便最小化项目持续时间。该方法是通过对大型商业Y2K大规模维护项目的实证研究验证,该项目将这些技术彼此进行比较,并且随机搜索(提供基线比较数据)。结果表明,基于订购的基因组编码(具有量身定制的交叉运算符)和遗传算法似乎提供了最强大的解决方案,但爬山方法也表现良好。最好的搜索技术结果将项目持续时间降低到50%。

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