Forecasting Peak Hours for Energy Consumption in Regional Power Systems

S. Saitov, N. Chichirova, A. Filimonova, N. B. Karnitsky
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Abstract

. Electrical power is the second most important commodity in electrical energy markets. For consumers, the charged amount of “generator” power is determined as the average value of hourly consumption amounts on working days during peak hours in the region. The cost of power in some regions can reach 40 % of the final tariff, so reducing the load during peak hours by 10 % can lead to a decrease in monthly consumer payments by 3 %. However, such a way of saving money is not available to the consumer since the commercial operator of the wholesale market of electricity and capacity publishes the peak hours of the regions after the 10th day of the next month, when this information is no longer relevant. Timely forecasting of peak hours will make it possible, on the one hand, to reduce consumer costs for payments for electric power, and on the other hand, to smooth out the daily schedule of electric load of the power system, thereby optimizing the operation of generating equipment of stations and networks of the system operator. The article presents a study of the effectiveness of machine learning methods in the context of forecasting the peak hour of a regional power system. The study concerns the period from November 2011 to October 2023, covers 76 regions of the Russian Federation, including subjects of price (1st and 2nd) and non-price zones and includes 10 machine-learning methods. The results of the study showed that statistically, the K-nearest neighbors clustering method turns out to be the most accurate, although not universal. Support Vector Classifier and Decision Tree Classifier have demonstrated high efficiency (in terms of accuracy and speed). The study also refuted the assumption that the closest data in terms of time series has the greatest value in predicting peak hours.
预测区域电力系统能源消耗的高峰时段
.电力是电能市场的第二大商品。对于消费者来说,"发电机 "的电费是根据该地区高峰时段工作日每小时用电量的平均值确定的。在某些地区,电力成本可高达最终电价的 40%,因此将高峰时段的负荷减少 10%,可使消费者的月付款减少 3%。然而,由于电力和电力容量批发市场的商业运营商会在下个月的第 10 天之后公布各地区的高峰时段,而此时这些信息已经不再适用,因此消费者无法获得这样的省钱方法。及时预测高峰时段一方面可以降低消费者的电力支付成本,另一方面可以平滑电力系统的电力负荷日计划,从而优化发电站发电设备和系统运营商网络的运行。文章介绍了机器学习方法在预测地区电力系统高峰时段方面的有效性研究。研究时间跨度为 2011 年 11 月至 2023 年 10 月,涉及俄罗斯联邦 76 个地区,包括价格区(第一和第二区)和非价格区,包括 10 种机器学习方法。研究结果表明,从统计学角度看,K-近邻聚类方法是最准确的,尽管并不通用。支持向量分类器和决策树分类器在准确性和速度方面都表现出很高的效率。研究还反驳了 "时间序列中最接近的数据对预测高峰时段最有价值 "的假设。
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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