Probabilistic Load Forecasting for Day-Ahead Congestion Mitigation

Gonca Gürses-Tran, Hendrik Flamme, A. Monti
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引用次数: 5

Abstract

Short-term load forecasting is typically used by electricity market participants to optimize their trading decisions and by system operators to ensure reliable grid operation. In particular, it allows the latter to foresee potential power imbalances and other critical grid states and thereafter, to enforce appropriate mitigation actions. Especially, forecasting critical grid states such as congestions, plays an essential role in this context. This paper proposes a recurrent neural network that is trained to forecast day-ahead time-series and prediction intervals for residual loads. Moreover, a comprehensive overview on probabilistic evaluation metrics is given. The ignorance score and the quantile score are used during the training whereas other metrics are for evaluation as they facilitate comparability between the different forecasting approaches with the naive baselines. The proposed deep learning model can be both specified as a parametric or as a non-parametric model and delivers reliable forecasts for day-ahead purposes.
日前拥堵缓解的概率负荷预测
短期负荷预测通常被电力市场参与者用来优化他们的交易决策,被系统运营商用来确保可靠的电网运行。特别是,它使后者能够预见潜在的电力不平衡和其他关键电网状态,并在此之后实施适当的缓解行动。特别是,预测电网的关键状态,如拥堵,在这种情况下起着至关重要的作用。本文提出了一种递归神经网络,用于预测剩余负荷的日前时间序列和预测区间。此外,还对概率评价指标进行了全面的概述。无知分数和分位数分数在训练期间使用,而其他指标用于评估,因为它们促进了不同预测方法与朴素基线之间的可比性。所提出的深度学习模型既可以指定为参数模型,也可以指定为非参数模型,并为前一天的目的提供可靠的预测。
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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