数据中心需求响应:通过负载转移和本地发电避免同时出现峰值

Zhenhua Liu, A. Wierman, Yuan Chen, Benjamin Razon, Niangjun Chen
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引用次数: 239

摘要

需求响应是未来智能电网的一个重要方面。它有可能提供显著的峰值需求减少,并简化可再生能源并入电网的过程。考虑到与传统工业设施相比,数据中心的能源消耗高且不断增加,需求管理的灵活性,数据中心参与需求响应变得越来越重要。在这篇扩展摘要中,我们简要描述了全文中关于两种需求响应方案的最新工作,以减少数据中心的峰值负载和能源消耗:工作负载转移和使用本地发电。在我们的全文中,我们对科罗拉多州柯林斯堡公用事业公司20多年来的一致峰值数据进行了详细的特征研究,然后通过将工作量调度和本地发电相结合,为数据中心开发了两种算法,以避免一致峰值并减少能源消耗。第一种算法优化了期望代价,第二种算法对任何一致峰值模式都提供了良好的最坏情况保证。我们通过基于生产系统的真实世界轨迹的数值模拟来评估这些算法。结果表明,与单独使用任何一种方法相比,使用工作量转移与本地发电相结合可以节省大量成本(在柯林斯堡公用事业公司的案例中高达40%)。
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Data center demand response: avoiding the coincident peak via workload shifting and local generation
Demand response is a crucial aspect of the future smart grid. It has the potential to provide significant peak demand reduction and to ease the incorporation of renewable energy into the grid. Data centers' participation in demand response is becoming increasingly important given the high and increasing energy consumption and the flexibility in demand management in data centers compared to conventional industrial facilities. In this extended abstract we briefly describe recent work in our full paper on two demand response schemes to reduce a data center's peak loads and energy expenditure: workload shifting and the use of local power generations. In our full paper, we conduct a detailed characterization study of coincident peak data over two decades from Fort Collins Utilities, Colorado and then develop two algorithms for data centers by combining workload scheduling and local power generation to avoid the coincident peak and reduce the energy expenditure. The first algorithm optimizes the expected cost and the second one provides a good worst-case guarantee for any coincident peak pattern. We evaluate these algorithms via numerical simulations based on real world traces from production systems. The results show that using workload shifting in combination with local generation can provide significant cost savings (up to 40% in the Fort Collins Utilities' case) compared to either alone.
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