Forecasting data centers power consumption with the Holt-Winters method

M. Rossi, D. Brunelli
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引用次数: 25

Abstract

Data centers are rapidly increasing in the last few years and this trend will continue in the future due to the market demand for virtual infrastructures, cloud services and IoT applications. The whole ICT sector is faced with an energy efficiency challenge and data centers represent a significant share of all ICT-related emissions. Improving energy efficiency has therefore become a critical objective for ICT infrastructures and equipment suppliers. To mitigate the electrical energy demand used both for computing and for cooling, many scheduling and planning methods have been proposed. All of them can benefit from accurate predictions of the workload. In this paper we demonstrate how forecasting tools can remarkably increase the energy efficiency of a data center.
使用Holt-Winters方法预测数据中心的功耗
数据中心在过去几年中迅速增长,由于市场对虚拟基础设施、云服务和物联网应用的需求,这种趋势将在未来持续下去。整个信息通信技术部门都面临着能源效率的挑战,数据中心在所有与信息通信技术相关的排放中占很大份额。因此,提高能源效率已成为信通技术基础设施和设备供应商的一个关键目标。为了减少用于计算和冷却的电能需求,人们提出了许多调度和规划方法。它们都可以从对工作负载的准确预测中获益。在本文中,我们演示了预测工具如何显著提高数据中心的能源效率。
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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