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Probabilistic electricity price forecasting with NARX networks: Combine point or probabilistic forecasts?

机译:概率电价预测NARX网络:结合点或概率预测?

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Recent electricity price forecasting studies have shown that decomposing a series of spot prices into a long-term trend-seasonal and a stochastic component, modeling them independently and then combining their forecasts, can yield more accurate point predictions than an approach in which the same regression or neural network model is calibrated to the prices themselves. Here, considering two novel extensions of this concept to probabilistic forecasting, we find that (i) efficiently calibrated non-linear autoregressive with exogenous variables (NARX) networks can outperform their autoregressive counterparts, even without combining forecasts from many runs, and that (ii) in terms of accuracy it is better to construct probabilistic forecasts directly from point predictions. However, if speed is a critical issue, running quantile regression on combined point forecasts (i.e., committee machines) may be an option worth considering. Finally, we confirm an earlier observation that averaging probabilities outperforms averaging quantiles when combining predictive distributions in electricity price forecasting. (C) 2019 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
机译:最近的电价预测研究表明,将一系列现货价格分解成长期趋势 - 季节性和随机成分,独立建模,然后结合其预测,可以产生比同一回归的方法更准确的点预测或神经网络模型被校准到价格本身。在这里,考虑到这一概念的两个新颖的扩展到概率预测,我们发现(i)有效地校准了外源变量(NARX)网络的非线性自回归,即使在不组合许多运行的情况下,即使没有组合预测)在准确性方面,最好直接从点预测构建概率预测。但是,如果速度是一个关键问题,则在组合点预测上运行数量回归(即,委员会机器)可能是值得考虑的选择。最后,我们确认了较早的观察,即当在电力价格预测中结合预测分布时,平均概率越高平均量。 (c)2019国际预测研究所。 elsevier b.v出版。保留所有权利。

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