论文标题
合奏预测日内电价:模拟轨迹
Ensemble Forecasting for Intraday Electricity Prices: Simulating Trajectories
论文作者
论文摘要
关于点电价预测的最新研究表明,每小时德国盘中连续市场的效率较弱。因此,我们以一种新颖的高级方法来解决这个问题。通过模拟每个交易窗口中的轨迹以获得逼真的合奏,以允许更有效的盘内交易和重新配置,可以对小时的日内电价进行概率预测。普遍的添加剂模型拟合了价格差异,假设它们遵循零膨胀的分布,正是狄拉克和学生的T分布的混合物。此外,使用高维Logistic回归和LASSO惩罚来估计混合项。我们使用I.A.建模该系列的预期价值和波动性。自回归和无贸易效果或负载,风和太阳生成预测以及对例如非线性的核算。时间到期。使用滚动窗口预测研究对样本内特征和预测性能进行了分析。将模型的多个版本与多个基准模型进行了比较,并使用概率预测措施和显着性测试进行了评估。该研究的目的是在交易的最后3个小时内预测德国盘中连续市场的价格分配,但是该方法允许将其应用于其他连续市场,尤其是在欧洲。结果证明了混合模型超过基准的优势,从挥发性的建模中获得最大的收益。他们还表明,XBID的引入降低了市场的波动。
Recent studies concerning the point electricity price forecasting have shown evidence that the hourly German Intraday Continuous Market is weak-form efficient. Therefore, we take a novel, advanced approach to the problem. A probabilistic forecasting of the hourly intraday electricity prices is performed by simulating trajectories in every trading window to receive a realistic ensemble to allow for more efficient intraday trading and redispatch. A generalized additive model is fitted to the price differences with the assumption that they follow a zero-inflated distribution, precisely a mixture of the Dirac and the Student's t-distributions. Moreover, the mixing term is estimated using a high-dimensional logistic regression with lasso penalty. We model the expected value and volatility of the series using i.a. autoregressive and no-trade effects or load, wind and solar generation forecasts and accounting for the non-linearities in e.g. time to maturity. Both the in-sample characteristics and forecasting performance are analysed using a rolling window forecasting study. Multiple versions of the model are compared to several benchmark models and evaluated using probabilistic forecasting measures and significance tests. The study aims to forecast the price distribution in the German Intraday Continuous Market in the last 3 hours of trading, but the approach allows for application to other continuous markets, especially in Europe. The results prove superiority of the mixture model over the benchmarks gaining the most from the modelling of the volatility. They also indicate that the introduction of XBID reduced the market volatility.