Genetic algorithm and gravitational emulation based hybrid load balancing strategy in cloud computing

Scintami Dam, G. Mandal, K. Dasgupta, P. Dutta
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引用次数: 69

Abstract

Cloud computing enables a new supplement of consumption and delivery model for internet based services and protocol. It helps to provide software, hardware and data in form of collaborative services on the demand of the end user. To meet the QoS and ensure high interoperability and scalability is one of the most challenging tasks for cloud service provider. However, there are also several technical challenges that need to be tackled before the benefits can be fully realized. Among them reliability, resource provisioning, and efficient resources consuming etc are major concern. Load balancing also one of them. It includes selecting a proper node that must be full filled end user demand and also distribution of dynamic workload evenly into the multiple nodes. So load balancing can be described as an optimization problem and should be adapting nature due to the changing needs. In this paper we suggest a novel load balancing strategy to search under loaded node to balance load from overwhelmed node. CloudAnalyst used as a simulation tool for the proposed load balancing strategy. Experimental results of the sample application are really very encouraging. Significantly the results of the proposed algorithm are compared and outperformed the traditional strategy like First Come First Serve(FCFS), local search algorithm like Stochastic Hill Climbing(SHC) and soft computing approaches like Genetic Algorithm (GA) and Ant Colony Optimization(ACO).
基于遗传算法和重力仿真的云计算混合负载均衡策略
云计算为基于互联网的服务和协议提供了一种新的消费和交付模式的补充。它有助于根据最终用户的需求以协作服务的形式提供软件、硬件和数据。满足QoS要求并保证高互操作性和可扩展性是云服务提供商最具挑战性的任务之一。然而,在充分实现这些好处之前,还需要解决一些技术挑战。其中,可靠性、资源配置、资源高效消耗等是人们关注的重点。负载平衡也是其中之一。它包括选择一个必须完全满足最终用户需求的适当节点,以及将动态工作负载均匀地分配到多个节点。因此,负载平衡可以被描述为一个优化问题,并且应该适应不断变化的需求。本文提出了一种新的负载均衡策略,通过搜索负载不足的节点来平衡超载节点的负载。CloudAnalyst用作所建议的负载平衡策略的模拟工具。示例应用程序的实验结果确实非常令人鼓舞。与传统的先到先得策略(FCFS)、随机爬坡(SHC)等局部搜索算法以及遗传算法(GA)和蚁群优化(ACO)等软计算方法进行了比较。
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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