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An evolutionary non-Linear great deluge approach for solving course timetabling problems

机译:解决课程时间表问题的进化非线性大洪水方法

摘要

The aim of this paper is to extend our non-linear great deluge algorithm into an evolutionary approach by incorporating a population and a mutation operator to solve the university course timetabling problems. This approach might be seen as a variation of memetic algorithms. The popularity of evolutionary computation approaches has increased and become an important technique in solving complex combinatorial optimisation problems. The proposed approach is an extension of a non-linear great deluge algorithm in which evolutionary operators are incorporated. First, we generate a population of feasible solutions using a tailored process that incorporates heuristics for graph colouring and assignment problems. The initialisation process is capable of producing feasible solutions even for large and most constrained problem instances. Then, the population of feasible timetables is subject to a steady-state evolutionary process that combines mutation and stochastic local search. We conducted experiments to evaluate the performance of the proposed algorithm and in particular, the contribution of the evolutionary operators. The results showed the effectiveness of the hybridisation between non-linear great deluge and evolutionary operators in solving university course timetabling problems.
机译:本文的目的是通过结合种群和变异算子来解决大学课程时间表问题,从而将非线性大洪水算法扩展为一种进化方法。这种方法可能被视为模因算法的一种变体。进化计算方法的普及已经增加,并成为解决复杂的组合优化问题的重要技术。所提出的方法是其中结合了进化算子的非线性大洪水算法的扩展。首先,我们使用量身定制的过程生成了可行的解决方案,该过程结合了图形着色和分配问题的启发式方法。初始化过程甚至能够为大型和最受约束的问题实例提供可行的解决方案。然后,可行时间表的总体将经历结合突变和随机局部搜索的稳态演化过程。我们进行了实验,以评估所提出算法的性能,尤其是进化算子的贡献。结果表明,非线性大洪水与进化算子之间的混合在解决大学课程时间表问题中是有效的。

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