竞价区级长期发电预测的机器学习模型

Michela Moschella, M. Tucci, E. Crisostomi, Alessandro Betti
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引用次数: 3

摘要

可再生能源发电的渗透率不断提高,需要更准确和可靠的预测工具来支持传统的电网操作(例如,单位承诺、电力市场结算或维护计划)。为此,许多物理模型已被采用,最近许多统计或机器学习算法以及一般的数据驱动方法正在成为深入研究的主题。一般来说,电力研究界关注的是单个电厂水平的电力预测,而在短期内,我们对宏观区域的总发电量(即面积大于10万平方公里的地区)感兴趣,未来的兴趣范围可达15天。在几个月的测试集上,用实际数据验证了所提出的预测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Model for Long-Term Power Generation Forecasting at Bidding Zone Level
The increasing penetration level of energy generation from renewable sources is demanding for more accurate and reliable forecasting tools to support classic power grid operations (e.g., unit commitment, electricity market clearing or maintenance planning). For this purpose, many physical models have been employed, and more recently many statistical or machine learning algorithms, and data-driven methods in general, are becoming subject of intense research. While generally the power research community focuses on power forecasting at the level of single plants, in a short future horizon of time, in this time we are interested in aggregated macro-area power generation (i.e., in a territory of size greater than 100000 km2) with a future horizon of interest up to 15 days ahead. Real data are used to validate the proposed forecasting methodology on a test set of several months.
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