Using conditional Invertible Neural Networks to perform mid-term peak load forecasting

IF 2.4 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
IET Smart Grid Pub Date : 2024-04-26 DOI:10.1049/stg2.12169
Benedikt Heidrich, Matthias Hertel, Oliver Neumann, Veit Hagenmeyer, Ralf Mikut
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引用次数: 0

Abstract

Measures for balancing the electrical grid, such as peak shaving, require accurate peak forecasts for lower aggregation levels of electrical loads. Thus, the Big Data Energy Analytics Laboratory (BigDEAL) challenge—organised by the BigDEAL—focused on forecasting three different daily peak characteristics in low aggregated load time series. In particular, participants of the challenge were asked to provide long-term forecasts with horizons of up to 1 year in the qualification. The authors present the approach of the KIT-IAI team from the Institute for Automation and Applied Informatics at the Karlsruhe Institute of Technology. The approach to the challenge is based on a hybrid generative model. In particular, the authors use a conditional Invertible Neural Network (cINN). The cINN gets the forecast of a sliding mean as representative of the trend, different weather features, and calendar information as conditioning input. By this, the proposed hybrid method achieved second place overall and won two out of three tracks of the BigDEAL challenge.

Abstract Image

使用条件可逆神经网络进行中期高峰负荷预测
平衡电网的措施(如削峰填谷)需要对较低聚集水平的电力负荷进行精确的峰值预测。因此,由 BigDEAL 组织的大数据能源分析实验室(BigDEAL)挑战赛侧重于预测低聚集负荷时间序列中三种不同的日峰值特征。特别是,挑战赛要求参赛者提供长达 1 年的长期预测。作者介绍了卡尔斯鲁厄理工学院自动化与应用信息学研究所 KIT-IAI 团队的方法。应对挑战的方法基于混合生成模型。作者特别使用了条件可逆神经网络(cINN)。cINN 以滑动平均值预测作为趋势代表,以不同的天气特征和日历信息作为条件输入。因此,所提出的混合方法在 BigDEAL 挑战赛中取得了总分第二名的好成绩,并赢得了三个赛道中的两个赛道。
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来源期刊
IET Smart Grid
IET Smart Grid Computer Science-Computer Networks and Communications
CiteScore
6.70
自引率
4.30%
发文量
41
审稿时长
29 weeks
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