基于遗传算法和模糊逻辑的云计算负载均衡

Ali Saadat, E. Masehian
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引用次数: 7

摘要

云计算系统在数字时代扮演着至关重要的角色。云计算中大多数场景中的一个关键瓶颈是资源可用性和网络带宽方面的高度不可预测性,这可能导致低服务质量(如低响应时间),这可以通过负载平衡来改善。负载平衡关注的是在一组服务器之间有效地分配传入的网络流量。这确保了没有单个服务器承担过多的需求,从而增加了用户的应用程序和网站的可用性。由于这类问题的状态空间非常大,因此在负载均衡中实现任务调度算法是非常有效的。在本文中,我们提出了一种混合智能的负载均衡方法:遗传算法模块随机安排任务,模糊逻辑模块根据服务器的RAM和CPU任务队列构建目标函数来确定服务器的繁忙状态。模糊输入变量为服务满意度、服务开始时间和服务结束时间,模糊输出变量为服务可用性。计算实验表明,在计划执行时间的一半内获得了最优解,用户满意度较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Load Balancing in Cloud Computing Using Genetic Algorithm and Fuzzy Logic
Cloud computing systems play a vital role in the digital age. A critical bottleneck in most scenarios in cloud computing is the high degree of unpredictability with respect to resource availability and network bandwidth, which may lead to low Quality of Service (like low response times), which can be improved by Load Balancing. Load balancing concerns with efficiently distributing incoming network traffic across a group of servers. This ensures no single server bears too much demand, and thus the availability of applications and websites for users is increased. Due to the huge state-space of such a problem, implementing task scheduling algorithms in load balancing can be very effective. In this paper, we propose a hybrid intelligent approach to load balancing: a Genetic Algorithm module arranges the jobs randomly, and a fuzzy logic module builds the objective function for determining busy states of servers according to their RAM and CPU task queues. The fuzzy input variables include the satisfaction degree and the start and end times of the service, and the fuzzy output is service availability. Computational experiments showed that the best solution was obtained within half of the planned execution time, which leads to higher user satisfaction degree.
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