APPLICATION OF THE REAL-TIME FAN SCHEDULING IN THE EXPLORATION-EXPLOITATION TO OPTIMIZE MINIMUM FUNCTIONS OBJECTIVES

Q3 Economics, Econometrics and Finance
M. Larios, Perfecto M. QUINTERO-FLORES, M. Anzures-García, Miguel CAMACHO-HERNANDEZ
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引用次数: 0

Abstract

This paper presents the application of a task scheduling algorithm called Fan on an artificial intelligence technique as genetic algorithms for the problem of finding minima in objective functions, where the equations are predefined to measure the return on an investment. This work combines the methodologies of exploration and exploitation of a population, obtaining results with good aptitudes until finding a better learning based on conditions of not ending until an individual delivers a better aptitude, complying with the established restrictions, exhausting all possible options and fulfilling a stop condition. A real-time task planning algorithm was applied based on consensus techniques. A software tool was developed, and the scheduler called FAN was adapted that contemplates the execution of periodic, aperiodic, and sporadic tasks focused on controlled environments, considering that strict time restrictions are met. In the first phase of the work, it is shown how convergence precipitates to an evolution, this is done in few iterations. In a second stage, exploitation was improved, giving the algorithm a better performance in convergence and feasibility. As a result, there is the exploitation of the population and applying iterations with the fan algorithm and better aptitudes were obtained that occur through asynchronized processes under real-time planning concurrently.
实时风机调度在优化最小函数目标的勘探开发中的应用
本文介绍了一种称为Fan的任务调度算法在人工智能技术中的应用,作为在目标函数中寻找最小值问题的遗传算法,其中方程是预定义的,用于测量投资回报。这项工作结合了对人群的探索和开发方法,获得了具有良好才能的结果,直到在个人表现出更好的才能、遵守既定限制、用尽所有可能的选择并满足停止条件之前找到更好的学习。提出了一种基于一致性技术的实时任务规划算法。开发了一种软件工具,并对名为FAN的调度器进行了调整,该调度器考虑到满足严格的时间限制,可以执行集中在受控环境中的周期性、非周期性和偶发性任务。在工作的第一阶段,我们展示了收敛是如何促成进化的,这是在几次迭代中完成的。在第二阶段,对开发进行了改进,使算法在收敛性和可行性方面有了更好的性能。因此,在实时规划的同时,通过异步过程,可以利用种群并应用扇形算法的迭代,从而获得更好的适应能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
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0
审稿时长
8 weeks
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