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Probabilistic forecasting in day-ahead electricity markets: Simulating peak and off-peak prices

机译:概率预测日前电力市场:模拟高峰和低峰价格

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In this article we include dependency structures for electricity price forecasting and forecasting evaluation. We work with off-peak and peak time series from the German-Austrian day-ahead price; hence, we analyze bivariate data. We first estimate the mean of the two time series, and then in a second step we estimate the residuals. The mean equation is estimated by ordinary least squares and the elastic net, and the residuals are estimated by maximum likelihood. Our contribution is to include a bivariate jump component in a mean reverting jump diffusion model in the residuals. The models' forecasts are evaluated with use of four different criteria, including the energy score to measure whether the correlation structure between the time series is properly included. It is observed that the models with bivariate jumps provide better results with the energy score, which means that it is important to consider this structure to properly forecast correlated time series. (C) 2020 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
机译:在本文中,我们包括电力价格预测和预测评估的依赖结构。我们与德国 - 奥地利日前价格合作的峰值和高峰时间序列;因此,我们分析了一分识别数据。我们首先估计两个时间序列的平均值,然后在第二步中估计残差。平均等式由普通的最小二乘和弹性网估计,并且残留物被最大似然估计。我们的贡献是在残留物中的平均跳转扩散模型中包括一项双变跳组件。使用四种不同标准评估模型的预测,包括测量时间序列之间的相关性是否正确的能量分数。观察到具有二元跳跃的模型可以通过能量评分提供更好的结果,这意味着重要的是要考虑这种结构以适当地预测相关时间序列。 (c)2020国际预测研究所。由elsevier b.v出版。保留所有权利。

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