A dynamic self-adaptive resource-load evaluation method in cloud computing

Liyun Zuo, Lei Shu, Shoubin Dong, Zhangbing Zhou, Lei Wang
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引用次数: 0

Abstract

Cloud resource and its load have dynamic characteristics. To address this challenge, a dynamic self-adaptive evaluation method (termed SDWM) is proposed in this paper. SDWM uses some dynamic evaluation indicators to evaluate resource state more accurately. And it divides the resource load into three states - Overload, Normal and Idle by the self-adaptive threshold. Then it migrates overload resources to balance load, and releases idle resources whose idle times exceed a threshold to save energy, which can effectively improve system utilization. Experimental results demonstrate SDWM has better adaptability than other similar methods when resources dynamically join or exit. This shows the positive effect of the dynamic self-adaptive threshold.
云计算中动态自适应资源负荷评估方法
云资源及其负载具有动态特性。为了解决这一挑战,本文提出了一种动态自适应评估方法(SDWM)。SDWM采用一些动态评价指标,更准确地评价资源状态。通过自适应阈值将资源负载分为过载、正常和空闲三种状态。然后对过载资源进行迁移,实现负载均衡,并释放闲置时间超过阈值的闲置资源,节约能源,有效提高系统利用率。实验结果表明,SDWM在资源动态加入或退出时比其他类似方法具有更好的适应性。这说明了动态自适应阈值的积极作用。
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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