The exponential growth of renewable energy capacity has brought much uncertainty to electricity prices and to electricity generation. To address this challenge, the energy exchanges have been developing further trading possibilities, especially the intraday and balancing markets. For an energy trader participating in both markets, the forecasting of imbalance prices is of particular interest. Therefore, in this manuscript we conduct a very short-term probabilistic forecasting of imbalance prices, contributing to the scarce literature in this novel subject. The forecasting is performed 30 minutes before the delivery, so that the trader might still choose the trading place. The distribution of the imbalance prices is modelled and forecasted using methods well-known in the electricity price forecasting literature: lasso with bootstrap, gamlss, and probabilistic neural networks. The methods are compared with a naive benchmark in a meaningful rolling window study. The results provide evidence of the efficiency between the intraday and balancing markets as the sophisticated methods do not substantially overperform the intraday continuous price index. On the other hand, they significantly improve the empirical coverage. The analysis was conducted on the German market, however it could be easily applied to any other market of similar structure.
翻译:可再生能源能力的快速增长给电力价格和发电带来了很大的不确定性。为了应对这一挑战,能源交易所一直在进一步开发贸易可能性,特别是内部市场和平衡市场。对于一个参与两个市场的能源贸易商来说,预测不平衡价格是特别有意义的。因此,在本手稿中,我们对不平衡价格进行非常短的概率预测,从而对这一新颖主题的稀有文献作出了贡献。预测是在交付前30分钟进行,以便贸易商仍然可以选择交易地点。不平衡价格的分布是采用在电力价格预测文献中广为人知的方法来模拟和预测的:用靴子拉索、套子和概率神经网络。这些方法与有意义的滚动窗口研究中的天真基准进行了比较。其结果证明了市场内部和平衡之间的效率,因为尖端方法并没有大大超过日常持续价格指数。另一方面,它们大大改进了经验覆盖范围。分析是在德国市场进行的,但可以很容易适用于类似结构的其他市场。