云计算负载均衡算法研究

Vidya S. Handur, Supriya Belkar, S. Deshpande, Prakash Marakumbi
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引用次数: 2

摘要

随着各种计算设备互联程度的提高和智能手机的广泛使用等技术的进步,分布式应用的重要性不断提高。云计算是一种信息技术范例,它支持无处不在地访问可配置系统资源的共享池。负载平衡是云计算中各种具有挑战性的问题之一。它是一种在虚拟机之间分配用户请求的机制,以便根据每个虚拟机的容量按比例分配请求。请求平衡可以防止虚拟机过载或负载不足。本文对云计算中各种负载均衡算法的性能进行了比较。研究考虑的算法是节流和等扩散电流执行。模拟粒子群算法求解动态负载均衡问题。提出的工作比较了所有三种技术的响应时间。仿真结果表明,粒子群算法对于系统的动态变化具有较好的性能。
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Study of load balancing algorithms for Cloud Computing
The significance of distributed applications is constantly rising due to technological advancements such as increasing internetworking of various computing devices and widespread usage of smart phones. Cloud computing is an information technology paradigm that enables ubiquitous access to shared pools of configurable system resources. Load balancing is one among various challenging issues in cloud computing. It is a mechanism to distribute the user requests among the virtual machines so that the requests are assigned proportional to the capacity of each virtual machine. Balancing of requests prevents the virtual machines from being either overloaded or under loaded. This paper presents a comparison of performance of load balancing algorithms in cloud computing. The algorithms considered for study are Throttled and Equally Spread Current Execution. Particle swarm optimization is also simulated to solve load balancing dynamically. The proposed work compares response time of all the three techniques. The simulation results show that particle swarm optimization performs better for dynamic changes in the system.
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