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首页> 外文期刊>Systems, Man, and Cybernetics, Part C: Applications and Reviews, IEEE Transactions on >University Course Timetabling Using a Hybrid Harmony Search Metaheuristic Algorithm
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University Course Timetabling Using a Hybrid Harmony Search Metaheuristic Algorithm

机译:基于混合和声搜索元启发式算法的大学课程时间表

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摘要

University course timetabling problem (UCTP) is considered to be a hard combinatorial optimization problem to assign a set of events to a set of rooms and timeslots. Although several methods have been investigated, due to the nature of UCTP, memetic computing techniques have been more effective. A key feature of memetic computing is the hybridization of a population-based global search and the local improvement. Such hybridization is expected to strike a balance between exploration and exploitation of the search space. In this paper, a memetic computing technique that is designed for UCTP, called the hybrid harmony search algorithm (HHSA), is proposed. In HHSA, the harmony search algorithm (HSA), which is a metaheuristic population-based method, has been hybridized by: 1) hill climbing, to improve local exploitation; and 2) a global-best concept of particle swarm optimization to improve convergence. The results were compared against 27 other methods using the 11 datasets of Socha et al. comprising five small, five medium, and one large datasets. The proposed method achieved the optimal solution for the small dataset with comparable results for the medium datasets. Furthermore, in the most complex and large datasets, the proposed method achieved the best results.
机译:大学课程时间表问题(UCTP)被认为是将一组事件分配给一组房间和时隙的硬组合优化问题。尽管已经研究了几种方法,但由于UCTP的性质,模因计算技术已经更加有效。模因计算的关键特征是基于总体的全局搜索和局部改进的混合。预期这种杂交将在探索空间的探索和开发之间取得平衡。本文提出了一种针对UCTP设计的模因计算技术,称为混合和声搜索算法(HHSA)。在HHSA中,和谐搜索算法(HSA)是一种基于元启发式人口的方法,已通过以下方式进行了混合:1)爬山,以提高当地开发水平; 2)全球最佳的粒子群优化概念,以提高收敛性。使用Socha等人的11个数据集,将结果与其他27种方法进行了比较。包含五个小型,五个中等和一个大型数据集。所提出的方法为小型数据集实现了最佳解决方案,与中等数据集的结果具有可比性。此外,在最复杂和最大的数据集中,该方法取得了最佳结果。

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