基于动态染色体的遗传算法求解大学课程排课问题

Ghazi Alnowaini, Amjad Abdullah Aljomai
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引用次数: 4

摘要

高校课程表的编制是目前高校课程表编制中较难解决的问题之一,因为课程表数量多,课程表之间存在冲突。这使得引入耗费表生产时间和精力的计划构建限制变得困难。许多方法被建议使用计算机来解决这个问题,包括遗传算法(GA),该算法的主要目的是减少时间表中的冲突数量和减少搜索空间编码。本文提出了一种利用遗传算法自动编制教师课程表的系统。一种遗传算法被用来安排工程和信息技术学院的时间表,它具有动态的染色体大小,随着每个系的课程数量而灵活。该算法可以根据不同的机构(即院系或研究所)的局限性进行应用。与人工调度或现有系统相比,该系统在评估阶段取得了约93%的良好效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic Algorithm For Solving University Course Timetabling Problem Using Dynamic Chromosomes
Building of university timetable is one of the problems that are difficult to be solved because of the large number of lectures and conflicts between them. This makes it difficult to introduce schedule-building restrictions that consume time and effort for table production. Many methods have been suggested that the computer is used to solve this problem, including a Genetic Algorithm (GA) where the main purpose of the algorithm is to reduce the number of conflicts in the timesheet and to reduce the search space encoding. This paper proposes an automated system to build a faculty timetable using a genetic algorithm. A genetic algorithm had been used to schedule the timetable of the faculty of engineering and information technology with a dynamic chromosome size that is flexible with the course numbers of each department. This algorithm can be applied in different institutions (i.e. faculties, or institutes) According to their limitations. The proposed system achieved great results during the evaluation phase of around 93% compared to manual scheduling or the systems available.
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