Load balancing optimization in cloud computing: Applying Endocrine-particale swarm optimization

S. Aslanzadeh, Z. Chaczko
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引用次数: 23

Abstract

Load balancing optimization is categorized as NP-hard problem, playing an important role in enhancing the cloud utilization. Different methods have been proposed for achieving the system load balancing in cloud environment. VM migration is one of these techniques, proposed to improve the VMs' functionality. Despite of the advantageous of VM migration, there are still some drawbacks which urged researchers to improve VM migration methods. In this paper we propose a new load balancing technique, using Endocrine algorithm which is inspired from regulation behavior of human's hormone system. Our proposed algorithm achieves system load balancing by applying self-organizing method between overloaded VMs. This technique is structured based on communications between VMs. It helps the overloaded VMs to transfer their extra tasks to another under-loaded VM by applying the enhanced feed backing approach using Particle Swarm Optimization (PSO). To evaluate our proposed algorithm, we expanded the cloud simulation tool (Cloudsim) which is developed by University of Melbourne. The simulation result proves that our proposed load balancing approach significantly decreases the timespan compared to traditional load balancing techniques. Moreover it increases the Quality Of Service (QOS) as it minimizes the VMs' downtime.
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云计算中的负载均衡优化:应用内分泌粒子群优化
负载均衡优化被归类为NP-hard问题,在提高云利用率方面发挥着重要作用。为了实现云环境下的系统负载均衡,人们提出了不同的方法。虚拟机迁移就是其中的一种技术,它的提出是为了提高虚拟机的功能。尽管虚拟机迁移有其优点,但也存在一些不足,促使研究人员不断改进虚拟机迁移方法。本文从人体激素系统的调节行为中汲取灵感,提出了一种新的负载平衡技术——内分泌算法。我们提出的算法通过在过载的虚拟机之间应用自组织方法实现系统负载均衡。该技术是基于虚拟机之间的通信构建的。它通过粒子群优化(PSO)的增强型反馈方法,帮助负载过重的虚拟机将额外的任务转移到负载较低的虚拟机。为了评估我们提出的算法,我们扩展了墨尔本大学开发的云模拟工具(Cloudsim)。仿真结果表明,与传统的负载均衡技术相比,我们提出的负载均衡方法显著缩短了时间跨度。此外,它提高了服务质量(QOS),因为它最大限度地减少了虚拟机的停机时间。
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