Hybrid Whale Optimization Algorithm for Solving Timetabling Problems of ITC 2019

I. G. A. Premananda, A. Tjahyanto, A. Muklason
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引用次数: 1

Abstract

Timetabling problem at universities is one of the problems that require more attention in operations research. This problem is known as NP-Hard problem, therefore non-deterministic exact algorithm could solve problems within this category within polynomial time. The heuristic approach can produce a fairly good solution within polynomial time but does not guarantee that the solution is optimal. So, there is always a gap in a heuristic algorithm that can be studied to result enhanced algorithm with better performance. There are a lot of timetabling problem domains in the literature that have been well studied in the scientific literature especially in the field of operational research and artificial intelligence. However, there are still few prior studies reported in the literature that focus on solving relatively new timetabling problem domain of International Timetabling Competition 2019 (ITC 2019). The competition presents real-world datasets with high complexity and large problem sizes. This paper reports our study of developing a novel algorithm called the Hybrid Whale Optimization Algorithm to solve the ITC 2019 problem. The algorithm combines the adapted whale optimization algorithm (WOA) and Late Acceptance Hill Climbing (LAHC) algorithm. The experimental results show that The WOA algorithm successfully improved the average penalty value by 65%. Furthermore, the hybrid WOA improves the WOA algorithm even better, especially on four datasets by 16-43%. Compared to other algorithms reported in the competition, the Hybrid WOA algorithm is ranked 7 out of 13.
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求解ITC 2019调度问题的混合鲸优化算法
高校课程表问题是运筹学研究中亟待关注的问题之一。这个问题被称为NP-Hard问题,因此非确定性精确算法可以在多项式时间内解决这一类问题。启发式方法可以在多项式时间内产生相当好的解,但不能保证解是最优的。因此,启发式算法总是存在一定的缺陷,通过研究这些缺陷,可以得到性能更好的增强算法。在科学文献中,特别是在运筹学和人工智能领域,有许多时间表问题领域已经得到了很好的研究。然而,目前文献中还很少报道针对2019年国际课程表竞赛(ITC 2019)中相对较新的课程表问题领域的研究。该竞赛展示了具有高复杂性和大问题规模的真实数据集。本文报告了我们研究开发一种称为混合鲸优化算法的新算法来解决ITC 2019问题。该算法结合了自适应鲸鱼优化算法(WOA)和后期接受爬坡算法(LAHC)。实验结果表明,WOA算法成功地将平均惩罚值提高了65%。此外,混合WOA算法对WOA算法有更好的改进,特别是在4个数据集上提高了16-43%。与竞赛中报道的其他算法相比,Hybrid WOA算法在13个算法中排名第7。
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