数据中心需求响应定价

Zhenhua Liu, Iris Liu, S. Low, A. Wierman
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引用次数: 172

摘要

需求响应对于将可再生能源并入电网至关重要。在本文中,我们将重点关注一个特别有前景的需求响应行业:数据中心。我们使用模拟来表明,数据中心不仅负载大,而且如果给予适当的激励,它们可以提供与大型存储一样多(甚至可能更多)的灵活性。然而,由于大多数数据中心保持市场力量,很难设计有效的数据中心需求响应程序。为此,我们提出基于预测的定价是一种有吸引力的市场设计,并表明在市场力量是一个问题的情况下,它优于更传统的供应函数投标机制。然而,当预测不准确时,基于预测的定价可能效率低下,因此我们提供了预测误差对基于预测的定价效率影响的分析,最坏情况边界。即使考虑到网络约束,这些界限仍然成立,并强调基于预测的定价对预测误差的鲁棒性令人惊讶。
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Pricing data center demand response
Demand response is crucial for the incorporation of renewable energy into the grid. In this paper, we focus on a particularly promising industry for demand response: data centers. We use simulations to show that, not only are data centers large loads, but they can provide as much (or possibly more) flexibility as large-scale storage if given the proper incentives. However, due to the market power most data centers maintain, it is difficult to design programs that are efficient for data center demand response. To that end, we propose that prediction-based pricing is an appealing market design, and show that it outperforms more traditional supply function bidding mechanisms in situations where market power is an issue. However, prediction-based pricing may be inefficient when predictions are inaccurate, and so we provide analytic, worst-case bounds on the impact of prediction error on the efficiency of prediction-based pricing. These bounds hold even when network constraints are considered, and highlight that prediction-based pricing is surprisingly robust to prediction error.
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