Dynamic Control of Electricity Cost with Power Demand Smoothing and Peak Shaving for Distributed Internet Data Centers

Jianguo Yao, Xue Liu, Wenbo He, Ashikur Rahman
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引用次数: 32

Abstract

Internet based service providers, such as Amazon, Google, Yahoo etc, build their data centers (IDC) across multiple regions to provide reliable and low latency of services to clients. Ever-increasing service demand, complexity of services and growing client population cause enormous power consumptions by these IDCs incurring a major part of their running costs. Modern electric power grid provides a feasible way to dynamically and efficiently manage the electricity cost of distributed IDCs based on the Locational Marginal Pricing (LMP) policy. While recent works exploit LMP by electricity-price based geographic load distribution, the dynamic workload and high volatility of electricity prices induce highly volatile power demand and critical power peak problem. The benefit of cost minimization via geographic load distribution is counterbalanced with the high cost incurred by violating the peak power. In this paper, we study the dynamic control of electricity cost to provide low volatility in power demand and shaving of power peaks. To this end, a Model Predictive Control (MPC) electricity cost minimization problem is formulated based on a time-continuous differential model. The proposed solution minimizes electricity costs, provides low variation in power demand by penalizing the change in workload and alleviates the power peaks by tracking the available power budget. By providing extensive simulation results based on real-life electricity price traces we show the effectiveness of our approach.
分布式互联网数据中心用电需求平滑调峰的电费动态控制
基于互联网的服务提供商,如亚马逊、b谷歌、雅虎等,在多个地区建立自己的数据中心(IDC),为客户提供可靠、低延迟的服务。不断增长的服务需求、服务的复杂性和不断增长的客户数量导致这些idc的巨大电力消耗,这是其运行成本的主要部分。现代电网为分布式idc动态高效管理电力成本提供了一种可行的方法,即基于位置边际定价(LMP)策略。目前已有研究利用基于电价的地理负荷分布来开发LMP,但由于电力负荷的动态性和电价的高波动性导致了电力需求的高波动性和临界峰值问题。通过地理负荷分配实现成本最小化的好处与违反峰值功率产生的高成本相抵消。本文研究电力成本的动态控制,以提供低波动的电力需求和电力峰值的剃须。为此,提出了一个基于时间连续微分模型的模型预测控制(MPC)电力成本最小化问题。提出的解决方案最大限度地降低了电力成本,通过惩罚工作负载的变化提供了较低的电力需求变化,并通过跟踪可用的电力预算缓解了电力峰值。通过提供基于真实电价轨迹的广泛模拟结果,我们展示了我们方法的有效性。
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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