An Empirical Comparison of Alternate Schemes for Combining Electricity Spot Price Forecasts

J. Nowotarski, Eran Raviv, S. Trück, R. Weron
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引用次数: 128

Abstract

In this paper we investigate the use of forecast averaging for electricity spot prices. While there is an increasing body of literature on the use of forecast combinations, there is only a small number of applications of these techniques in the area of electricity markets. In this comprehensive empirical study we apply seven averaging and one selection scheme and perform a backtesting analysis on day-ahead electricity prices in three major European and US markets. Our findings support the additional benefit of combining forecasts for deriving more accurate predictions, however, the performance is not uniform across the considered markets. Interestingly, equally weighted pooling of forecasts emerges as a viable robust alternative compared with other schemes that rely on estimated combination weights. Overall, we provide empirical evidence that also for the extremely volatile electricity markets, it is beneficial to combine forecasts from various models for the prediction of day-ahead electricity prices. In addition, we empirically demonstrate that not all forecast combination schemes are recommended.
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结合电力现货价格预测的备选方案的实证比较
本文研究了预测平均法在电力现货价格中的应用。虽然关于使用预测组合的文献越来越多,但这些技术在电力市场领域的应用却很少。在这项全面的实证研究中,我们采用七平均和一选择方案,并对欧洲和美国三个主要市场的日前电价进行回测分析。我们的研究结果支持组合预测的额外好处,以获得更准确的预测,然而,在考虑的市场中,表现并不统一。有趣的是,与依赖于估计组合权重的其他方案相比,等加权的预测池成为一种可行的稳健替代方案。总体而言,我们提供的经验证据表明,对于极不稳定的电力市场,将各种模型的预测结合起来预测日前电价是有益的。此外,我们还通过实证证明,并非所有的预测组合方案都是推荐的。
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