Network constraints play a key role in the price finding mechanism for European Power Markets, but historical data is very sparse and usually insufficient for many quantitative applications. We reconstruct the constraints data, known as the Power Transmission Distribution Factors (PTDFs) and Remaining Available Margins (RAMs), by first recovering the underlying time dependent signals known as the Generation Shift Keys (GSKs) and Phase Angles (PAs), and the electricity grid characteristics, via a mathematical optimisation problem. This is solved by exploiting marginal convexity in certain subspaces via alternating minimisation. The GSKs and PAs are then mapped to the PTDFs and RAMs, using the grid structure. Our reconstruction achieves good in-sample and out-of-sample relative errors for the PTDFs and RAMs. We further show that our model outperforms the naive approach, and that the reconstructed GSKs and PAs recover specific structure.
翻译:网络制约在欧洲电力市场价格调查机制中发挥着关键作用,但历史数据非常稀少,通常不足以用于许多量化应用。我们通过首先恢复代代转移键和相控角等基本时间依赖信号,并通过数学优化问题恢复电网特征,从而重建限制数据,称为电力传输分布系数(PTDFs)和剩余可用边距(RAMs)。通过交替最小化来利用某些子空间的边际混凝化,可以解决这个问题。然后利用电网结构将GSKs和PAs绘制到PDFs和RAMs。我们的重建为PDFs和RAMs实现了良好的抽样和外抽样相对错误。我们进一步表明,我们的模型超越了天真的方法,重建的GSKs和PAs恢复了具体的结构。