Traffic Intensity Based Energy Efficiency Architecture for Data-Centers

Salman Qadri
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Abstract

The world is moving towards cost-effective and time-constrained solutions. The uses of applications and automated devices have been growing day by day. In computing, resources available in personal computers are limited due to less storage capacity and lower computation speeds. Using all applications on personal systems may not be cost-effective. Therefore, the trends of online storage and computing have become popular. On the other hand, there must be some serving end for these users. One of the major issues, due to the growth of data centers is the increase in power usage of a larger number of servers and network devices. These devices are power-hungry and consume energy even during idle hours even if there are no network traffic loads. The cost of energy used and dissipated is increased in this situation. In this paper, we have given a solution for efficient usage of energy efficiency in data center networks based on traffic loads. We have proposed a model to use traffic intensity to decide the number of machines inactive conditions so that we can save the energy consumption in data center networks. We have implemented this proposed model and simulated it to validate it.
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基于流量强度的数据中心能效体系结构
世界正朝着具有成本效益和时间限制的解决方案发展。应用程序和自动化设备的使用日益增长。在计算方面,由于存储容量较小和计算速度较慢,个人计算机中的可用资源受到限制。在个人系统上使用所有应用程序可能不符合成本效益。因此,在线存储和计算的趋势已经流行起来。另一方面,必须为这些用户提供服务端。由于数据中心的增长,主要问题之一是大量服务器和网络设备的功耗增加。这些设备非常耗电,即使在没有网络流量负载的空闲时间也会消耗能量。在这种情况下,使用和消耗能源的成本增加了。本文提出了一种基于流量负载的数据中心网络能源效率有效利用的解决方案。提出了一种利用流量强度来确定非活动状态机器数量的模型,从而达到节约数据中心网络能耗的目的。我们已经实现了该模型,并对其进行了仿真验证。
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