基于进化算法的大学课程调度

M. Aldasht, M. Alsaheb, Safa Adi, Mohammad Abu Qopita
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引用次数: 15

摘要

本文提出了一种基于进化算法的启发式算法,并将其应用于需要一个可行且舒适的时间表的大学课程调度问题。这里的想法是使用一个进化程序,这是一个类似于遗传算法的随机优化策略。主要的区别在于,进化程序坚持父母和后代之间的行为联系,而不是寻求模仿自然界中观察到的特定遗传操作。本文首先定义了问题,并确定了找到解决方案的约束条件。然后,用一组课程、教室、教师和学生组来描述问题模型。最后,将所提出的方法应用于我校四所学院之一的实际数据集。结果表明,我们的方法允许对指定问题的搜索空间进行更稳健的探索,并给出比手动执行更优化的时间表。实验结果还表明,该方法可以解决许多配准难题。
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University Course Scheduling Using Evolutionary Algorithms
This paper presents a new heuristic based on evolutionary algorithms and applied to the university course scheduling problem, where a feasible and comfort time tables are required. Here, the idea is to use an evolution program which is a stochastic optimization strategy similar to genetic algorithms. The main difference is that evolutionary programming insists on the behavioral linkage between parents and their offspring rather than seeking to emulate specific genetic operators as observed in nature. The paper starts by defining the problem and determining the constraints under which the solution should be found. Then, the problem model is described with a set of courses, rooms, instructors, and student groups. Finally, the proposed methodology is applied on a real data set from one of the four colleges of our university. Results show that our methodology permits more robust exploration for the search space of the designated problem which gives more optimized time schedules than those performed manually. The obtained results also show that the proposed solutions can solve many registration difficulties.
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