University course timetabling using a new hybrid genetic algorithm

A. Karami, M. Hasanzadeh
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引用次数: 22

Abstract

The university course timetabling problem (UCTP) is a classical, old and famous problem in the field of optimization problems. The purpose of UCTP is to schedule a number of events (courses) in proper timeslots and suitable rooms. In this problem, there are some hard and soft constraints. A feasible timetable must satisfy all hard constraints. In addition, each soft constraint violation causes a penalty. As far as UCTP is an NP-complete problem, it is reasonable to use population-based metaheuristic algorithms and evolutionary algorithms (EA). Although various methods have been presented the best results are referred to as hybrid evolutionary algorithms (HEA) and metaheuristics. The proposed method is a hybrid genetic algorithm (HGA). In our innovative HGA, the initial population which comes from heuristics is stored into red-black tree data structure. After that, our HGA creates new offsprings from previous individuals by its operators. Moreover, to improve local exploitation, we used hill climbing. The results were compared with other available ones using the 11 datasets of Socha et al. The results were promising and showed that the proposed HGA method is a good method to solve UCTP.
基于混合遗传算法的大学课程排课
大学课程排课问题(UCTP)是优化问题领域中一个经典的、古老的、著名的问题。UCTP的目的是在适当的时间段和合适的房间安排一些活动(课程)。在这个问题中,有一些硬约束和软约束。一个可行的时间表必须满足所有硬性限制。此外,每次违反软约束都会导致惩罚。由于UCTP是np完全问题,使用基于群体的元启发式算法和进化算法(EA)是合理的。虽然已经提出了各种方法,但最好的结果被称为混合进化算法(HEA)和元启发式。该方法是一种混合遗传算法(HGA)。在我们的创新HGA中,由启发式算法得到的初始种群被存储在红黑树数据结构中。在那之后,我们的HGA从以前的个体中创造新的后代。此外,为了提高当地的开发,我们采用了爬山的方式。将结果与Socha等人的11个数据集的其他可用结果进行比较。结果表明,提出的HGA方法是解决UCTP问题的一种很好的方法。
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