虚拟电厂管理的混合光伏发电功率预测算法

Carlos Santos-Pérez, Miguel Tradacete-ágreda, Guillermo Moreno-Baeza, Pedro Martin-Sánchez, Francisco J. Rodríguez-Sanchez
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引用次数: 0

摘要

本文基于虚拟电厂的概念,提出了一个促进远程光伏发电装置有效参与不同能源市场的框架。为了实现这一目标,最大的挑战在于根据市场决定的不同交货期提供准确的电力预测。为了解决这一挑战,提出了一种基于日前和日内预测模型的混合预测策略。对于每个提前期,通过从预测模型的输出中选择最能降低预测不确定性的值来提供一个点预测。该框架还要求云量预报提高预报的准确性,根据云量因子将天气分为晴天、多云和阴天三类。根据当天的实时信息,预测每15分钟更新一次。每当执行该算法时,将以15分钟的分辨率重新计算当天剩余时间的生成预测。点预测具有相应的置信区间,置信区间用拉普拉斯分布函数建模。这个区间在能源市场的背景下特别重要,因为它允许对任何能源偏差的处罚风险进行建模。在VPP工作环境中对该策略进行了评估,证明了混合预测算法的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Photovoltaic Power Forecasting Algorithm for Managing Virtual Power Plants
This paper proposes a framework, based on the concept of virtual power plant, for promoting the effective participation of remote photovoltaic power generation installations in different energy markets. To this aim, the most significant challenge lies in providing accurate power forecasts for different lead times determined by the markets. To address this challenge, a hybrid forecast strategy based on day-ahead and intra-day prediction models is proposed. For each lead time, a point prediction is provided by choosing, from the outputs of prediction models, the value which most reduces the prediction uncertainty. The framework also requires the cloudiness forecast to improve the accuracy of the prediction, by classifying the days in three categories according to a cloud cover factor, namely, sunny, cloudy and overcast. The predictions are updated every 15 minutes by using real-time information of the day considered. Whenever the algorithm is executed, the generation forecast for the rest of the day is recalculated with a 15-minute resolution. The point prediction is provided with the corresponding confidence interval, which is modelled by a Laplacian distribution function. This interval is of particular importance in the context of energy markets as it allows the risk of penalties for any energy deviation to be modelled. The strategy is evaluated in a VPP working environment demonstrating the potential of the hybrid prediction algorithm.
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