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Forecasting electricity spot prices using time-series models with a double temporal segmentation

机译:使用具有双重时间分段的时间序列模型预测电现货价格

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The French wholesale market is set to expand in the next few years under European pressure and national decisions. In this article, we assess the forecasting ability of several classes of time-series models for electricity wholesale spot prices at a day-ahead horizon in France. Electricity spot prices display a strong seasonal pattern, particularly in France, given the high share of electric heating in housing during winter time. To deal with this pattern, we implement a double temporal segmentation of the data. For each trading period and season, we use a large number of specifications based on market fundamentals: linear regressions, Markov-switching (MS) models and threshold models with a smooth transition. An extensive evaluation on French data shows that modelling each season independently leads to better results. Among nonlinear models, MS models designed to capture the sudden and fast-reverting spikes in the price dynamics yield more accurate forecasts. Finally, pooling forecasts give more reliable results.
机译:在欧洲压力和国家决策的推动下,法国的批发市场将在未来几年扩大。在本文中,我们评估了法国日趋广泛的电力批发现货价格的几类时间序列模型的预测能力。考虑到冬季房屋中电加热的比例较高,电现货价格表现出强烈的季节性格局,尤其是在法国。为了处理这种模式,我们对数据进行了双重时间分割。对于每个交易时段和每个季节,我们根据市场基本原理使用大量规格:线性回归,马尔可夫切换(MS)模型和平稳过渡的阈值模型。对法国数据的广泛评估表明,每个季节独立建模可以带来更好的结果。在非线性模型中,旨在捕获价格动态中突然且快速恢复的峰值的MS模型可产生更准确的预测。最后,合并预测可提供更可靠的结果。

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