Towards an aggregator that exploits big data to bid on frequency containment reserve market

C. Giovanelli, Xin Liu, S. Sierla, V. Vyatkin, R. Ichise
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引用次数: 12

Abstract

The increased penetration of distributed and volatile renewable generation requires the demand-side to be actively involved in energy balancing operations. This paper proposes a solution in which big data and machine learning methods are employed to enhance the capabilities of a Virtual Power Plant to participate and intelligently bid into a demand response energy market. The energy market being investigated consists of the frequency containment reserve market. First, we define the core decision-making required to overcome the uncertainties in the frequency containment reserve market participation for a Virtual Power Plant. Then, we focus on forecasting the frequency containment reserve prices for the day-ahead. We analyze the price data, and identify and collect the relevant features for the prediction of the prices. In addition, we select several regression analysis methods to be utilized for the prediction. Finally, we evaluate the performance of the implemented methods by executing several experiments, and compare the the performance with the performance of a state of the art autoregression method.
走向一个利用大数据竞价限频储备市场的聚合商
分布式和不稳定的可再生能源发电的日益普及要求需求方积极参与能源平衡操作。本文提出了一种利用大数据和机器学习方法增强虚拟电厂参与和智能投标需求响应能源市场的解决方案。所研究的能源市场包括频率控制储备市场。首先,我们定义了克服虚拟电厂频率控制储备市场参与不确定性所需的核心决策。然后,我们重点预测未来一天的频率控制储备价格。我们对价格数据进行分析,识别并收集相关特征,用于价格预测。此外,我们选择了几种回归分析方法来进行预测。最后,我们通过执行几个实验来评估所实现方法的性能,并将性能与最先进的自回归方法的性能进行比较。
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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