论文标题
削减云数据中心的电力成本的峰值功率:机遇和挑战
Peak Power Shaving for Reduced Electricity Costs in Cloud Data Centers: Opportunities and Challenges
论文作者
论文摘要
数据中心(DC)的电费不仅取决于DC消耗多少能量,尤其是在计费周期中消耗能量的分布方式。更具体地说,这些电力成本本质上是由两项主要费用组成的:能源费,基于消耗能源的成本(以千瓦时为单位)和峰值费用,这是基于计费周期中要求的最大功率(以kW为单位)的成本。后者的费用部分被迫鼓励DC在计费周期中平衡和规范其权力需求,从而使公用事业公司能够在不增加供应的情况下管理拥塞。因此,该计费模型呼吁开发峰值剃须方法,通过在计费周期内平滑峰值功率需求来降低成本,以最大程度地减少峰值电荷组件。在本文中,我们研究了峰值剃须的方法,然后首先使用Google数据痕迹来量化并提供对降低的电力成本的真正认识,可以在Google DC群集上削减功率需求峰值。然后,我们讨论为什么峰值剃须非常适合降低DC的电力成本,并描述两种常用的峰值剃须方法,即储能和工作量调制。我们最终确定并描述了尚未解决并需要进一步研究的关键研究问题。
An electricity bill of a data center (DC) is determined not only by how much energy the DC consumes, but especially by how the consumed energy is spread over time during the billing cycle. More specifically, these electricity costs are essentially made up of two major charges: Energy Charge, a cost based on the amount of consumed energy (in kWh), and Peak Charge, a cost based on the maximum power (in kW) requested during the billing cycle. The latter charge component is forced to encourage DCs to balance and regulate their power demands over the billing cycle, allowing the utility company to manage congestion without increasing supply. This billing model has thus called for the development of peak power shaving approaches that reduce costs by smoothing peak power demands over the billing cycle to minimize the Peak Charge component. In this paper, we investigate peak power shaving approaches, and begin by using Google data traces to quantify and provide a real sense of how much electricity cost reduction can peak power demand shaving achieve on a Google DC cluster. We then discuss why peak power shaving is well-suited for reducing electricity costs of DCs, and describe two commonly used peak shaving approaches, namely energy storage and workload modulation. We finally identify and describe key research problems that remain unsolved and require further investigation.