The intraday (ID) electricity market has received an increasing attention in the recent EU electricity-market discussions. This is partly because the uncertainty in the underlying power system is growing and the ID market provides an adjustment platform to deal with such uncertainties. Hence, market participants need a proper ID market price model to optimally adjust their positions by trading in the market. Inadequate historical data for ID market price makes it more challenging to model. This paper proposes long short-term memory, deep convolutional generative adversarial networks, and No-U-Turn sampler algorithms to model ID market prices. Our proposed econometric ID market price models are applied to the Nordic ID price data and their promising performance are illustrated.
翻译:最近欧盟电力市场讨论日益关注日内电力市场,部分原因是基础电力系统的不确定性正在增加,ID市场为解决这种不确定性提供了一个调整平台。因此,市场参与者需要一个适当的ID市场价格模型,以便通过市场交易来最佳地调整其地位。身份市场价格的历史数据不足,使得模型更具有挑战性。 本文提出了长期短期记忆、深层革命性对抗网络和无U-Turn抽样算法,以模拟身份市场价格。 我们提议的计量经济学市场价格模型适用于北欧ID价格数据,并展示其前景。