HYBRID LOAD BALANCING POLICY TO OPTIMIZE RESOURCE DISTRIBUTION AND RESPONSE TIME IN CLOUD ENVIRONMENT

L. M. Bokiye, I. Ozkan
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Abstract

Load balancing and task scheduling are the main challenges in Cloud Computing. Existing load balancing algorithms have a drawback in considering the capacity of virtual machines while distributing loads among them. The proposed algorithm works toward solving existing issues, such as fair load distribution, avoiding underloading and overloading, and improving response time. It implements best practices of Throttled load balancing algorithm and Equally Shared Current Execution algorithm. Virtual machines are selected based on the ratio of their bandwidth and load allocation count. Requests are sent to a Virtual Machine with higher bandwidth and lower load allocation count. Proposed algorithm checks for the availability of VM based on their capacity. This process is performed by selecting two VMs and comparing their vmWeight capacity. The one with the least vmWeight is selected. CloudAnalyst is used for simulation, response time evaluation, and resource utilization evaluation. The simulation result of the proposed algorithm is compared with three well-known load-balancing algorithms. These are Round Robin, Throttled Load balancing algorithm, and Enhanced Active Monitoring. Load-balancing Proposed Algorithm selects VMs based on their Algorithm. The proposed algorithm has improved over other algorithms in load distribution, response time, and resource utilization. All virtual machines in the data centers are loaded with a relatively equal number of tasks according to their capacity. This resulted in fair resource sharing and load distribution.
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混合负载均衡策略,优化云环境下的资源分配和响应时间
负载平衡和任务调度是云计算面临的主要挑战。现有的负载均衡算法在分配负载时不能考虑虚拟机的容量。提出的算法旨在解决现有的问题,如公平的负载分配,避免欠载和过载,并提高响应时间。它实现了节流负载均衡算法和均等共享当前执行算法的最佳实践。根据虚拟机的带宽和负载分配次数的比例选择虚拟机。请求被发送到具有更高带宽和更低负载分配计数的虚拟机。提出了一种基于虚拟机容量的可用性检测算法。该过程通过选择两个虚拟机并比较它们的vmWeight容量来完成。选择vmWeight最小的一个。CloudAnalyst用于模拟、响应时间评估和资源利用率评估。仿真结果与三种著名的负载均衡算法进行了比较。它们是轮询、节流负载平衡算法和增强型主动监控。负载均衡算法根据虚拟机的算法选择虚拟机。该算法在负载分配、响应时间和资源利用率等方面都优于其他算法。数据中心中所有虚拟机的任务数量根据其容量相对相等。这导致了公平的资源共享和负载分配。
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