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A Comparative Study of Three Artificial Intelligence Techniques: Genetic Algorithm, Neural Network, and Fuzzy Logic, on Scheduling Problem

机译:关于调度问题的三种人工智能技术:遗传算法,神经网络和模糊逻辑的比较研究

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摘要

Since scheduling process is an important and complicated process, many programmers have been searching and working on this issue for years. Still many researchers in the academic institutes are trying to find the best solution. As time is money, time optimization is the most important point, which makes the researchers develop a system for scheduling at the best way by applying the best solution. Once look at the production line of a factory or the number of classes and classrooms in a university, shows that having a time table in these places not only helps regulate things, but also it helps optimize consumption of resources such as time and energy within the constraints and limitations. This paper explains and reviews the three techniques, which have previously been applied on scheduling domain by researchers and developers among several artificial intelligence techniques. These three techniques i.e. Genetic Algorithm, Neural Network and Fuzzy Logic will be defined, discussed and compared in terms of some measures.
机译:由于调度过程是一个重要且复杂的过程,因此许多程序员多年来一直在搜索和处理此问题。学术机构中仍有许多研究人员正在尝试寻找最佳解决方案。时间就是金钱,时间优化是最重要的一点,这使得研究人员可以通过应用最佳解决方案来开发一种以最佳方式进行调度的系统。查看工厂的生产线或大学的班级和教室的数量后,就会发现在这些地方拥有时间表不仅可以帮助管理事物,而且还可以优化资源消耗,例如时间和精力。约束和限制。本文介绍并回顾了三种技术,这些技术先前已被研究人员和开发人员在几种人工智能技术中应用于调度领域。将根据一些措施来定义,讨论和比较这三种技术,即遗传算法,神经网络和模糊逻辑。

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