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Identifying calendar-correlated day-ahead price profile clusters for enhanced energy storage scheduling

机译:识别日历相关的日期价格概况集群,用于增强能量存储调度

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Optimising the scheduling of energy storage systems with respect to multiple revenue streams is crucial to the business case for installations in the UK and other countries with high electrical grid penetration. In this work we use hierarchical clustering for the first time to correlate groupings of UK day-ahead electricity price profiles with calendar period. We observe that there are three primary clusters in the 2017–2019 dataset, and hypothesise that these arise from the interplay of winter/summer variations in demand along with longer term variations in the wholesale gas price. Looking at finer detail, we find that in summer 2018 there is a clear split in weekday/weekend price profiles, with the latter showing a significantly delayed price peak, and higher night time prices. These findings demonstrate the usefulness of the approach for revenue stacking, as the optimal bidding for ancillary services to fit around the performance of peak shaving will be influenced by the knowledge of such patterns, especially when the horizon for bidding is beyond the day ahead.
机译:优化关于多个收入流的能量存储系统的调度对于英国和其他具有高电网渗透的国家的商业案例至关重要。在这项工作中,我们首次使用分层聚类来将英国前方电力价格简介的分组与日历周期相关联。我们观察到2017-2019数据集中有三个初级集群,并从冬季/夏季变化的相互作用中出现的假设以及批发储气价格的长期变化。看着更好的细节,我们发现2018年夏天,平日/周末价格概况中有一个明确的分裂,后者显示出明显延迟的价格高峰,夜间价格较高。这些调查结果表明了收入堆叠方法的有用性,因为辅助服务围绕峰值剃须性能的最佳竞标将受到这种模式的知识的影响,特别是当竞标的地平线超出了未来一天时。

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