融合深度学习和机器学习方法的电力系统小时边际电价预测

IF 5.1
iEnergy Pub Date : 2025-09-04 DOI:10.23919/IEN.2025.0019
Matin Farhoumandi;Sheida Bahramirad;Ahmed Alabdulwahab;Mohammad Shahidehpour;Farrokh Rahimi;Ali Ipakchi;Farrokh Albuyeh;Sasan Mokhtari
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引用次数: 0

摘要

在本文中,我们提出了STPLF,它代表区域边际价格成分的短期预测,包括不符合小时净负荷的预测。输电级每小时位置边际价格(LMPs)的波动是由几个因素造成的,包括天气数据、每小时天然气价格、历史每小时负荷和市场价格。此外,受表后分布式能源资源(DERs)和零售客户负载影响的非合规净负荷的变化可能对小时lmp的波动性产生重大影响,因为大型电网运营商对此类零售级资源的可见性有限。我们提出了一种STPLF的融合预测模型,该模型使用机器学习和深度学习方法来预测不符合负荷和各自的小时价格。此外,利用数据预处理和特征提取提高了STPLF的精度。提出的STPLF模型还包括一个用于计算每小时LMP峰值概率的后处理阶段。我们使用一组实际数据来分析STPLF结果,并验证了所提出的计算LMP峰值的概率方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusion of deep learning and machine learning methods for hourly locational marginal price forecast in power systems
In this paper, we propose STPLF, which stands for the short-term forecasting of locational marginal price components, including the forecasting of non-conforming hourly net loads. The volatility of transmission-level hourly locational marginal prices (LMPs) is caused by several factors, including weather data, hourly gas prices, historical hourly loads, and market prices. In addition, variations of non-conforming net loads, which are affected by behind-the-meter distributed energy resources (DERs) and retail customer loads, could have a major impact on the volatility of hourly LMPs, as bulk grid operators have limited visibility of such retail-level resources. We propose a fusion forecasting model for the STPLF, which uses machine learning and deep learning methods to forecast non-conforming loads and respective hourly prices. Additionally, data preprocessing and feature extraction are used to increase the accuracy of the STPLF. The proposed STPLF model also includes a post-processing stage for calculating the probability of hourly LMP spikes. We use a practical set of data to analyze the STPLF results and validate the proposed probabilistic method for calculating the LMP spikes.
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