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Optimal Energy Procurement for Geo-distributed Data Centers in Multi-timescale Electricity Markets

机译:多时标电力市场中地理分布数据中心的最佳能源采购

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摘要

Heavy power consumers, such as cloud providers and data center operators, can significantly benefit from multi-timescale electricity markets by purchasing some of the needed electricity ahead of time at cheaper rates. However, the energy procurement strategy for data centers in multi-timescale markets becomes a challenging problem when real world dynamics, such as the spatial diversity of data centers and the uncertainty of renewable energy, IT workload, and electricity price, are taken into account. In this paper, we develop energy procurement algorithms for geo-distributed data centers that utilize multi-timescale markets to minimize the electricity procurement cost. We propose two algorithms. The first algorithm provides provably optimal cost minimization while the other achieves near-optimal cost at a much lower computational cost. We empirically evaluate our energy procurement algorithms using real-world traces of renewable energy, electricity prices, and the workload demand. Our empirical evaluations show that our proposed energy procurement algorithms save up to 44% of the total cost compared to traditional algorithms that do not use multi-timescale electricity markets or geographical load balancing.
机译:像云提供商和数据中心运营商这样的大功率消费者可以通过以较低的价格提前购买一些所需的电力,从而从多时标电力市场中受益匪浅。但是,当考虑到诸如数据中心的空间多样性以及可再生能源,IT工作量和电价的不确定性等现实世界的动态时,多时标市场中数据中心的能源采购策略就成为一个具有挑战性的问题。在本文中,我们为地理分布数据中心开发了能源采购算法,该算法利用多时标市场来最大程度地减少电力采购成本。我们提出两种算法。第一种算法提供了可证明的最佳成本最小化,而另一种则以低得多的计算成本实现了接近最佳的成本。我们使用可再生能源,电价和工作量需求的真实世界来经验评估我们的能源采购算法。我们的经验评估表明,与不使用多时标电力市场或地理负载平衡的传统算法相比,我们提出的能源采购算法可节省高达44%的总成本。

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