An important revenue stream for electric battery operators is often arbitraging the hourly price spreads in the day-ahead auction. The optimal approach to this is challenging if risk is a consideration as this requires the estimation of density functions. Since the hourly prices are not normal and not independent, creating spread densities from the difference of separately estimated price densities is generally intractable. Thus, forecasts of all intraday hourly spreads were directly specified as an upper triangular matrix containing densities. The model was a flexible four-parameter distribution used to produce dynamic parameter estimates conditional upon exogenous factors, most importantly wind, solar and the day-ahead demand forecasts. These forecasts supported the optimal daily scheduling of a storage facility, operating on single and multiple cycles per day. The optimization is innovative in its use of spread trades rather than hourly prices, which this paper argues, is more attractive in reducing risk. In contrast to the conventional approach of trading the daily peak and trough, multiple trades are found to be profitable and opportunistic depending upon the weather forecasts.
翻译:电动电池操作员的一个重要收入来源往往是套用日头拍卖中的每小时价格差价。如果风险是需要估计密度功能的考虑因素,那么最佳的处理方法就具有挑战性。由于每小时价格不是正常的,也不是独立的,因此通常难以从单独估计价格密度的差额中产生分散密度。因此,所有每小时差价的预测都直接指定为包含密度的上三角矩阵。模型是灵活的四参数分布法,用于产生动态参数估计,以外在因素为条件,最重要的是风、太阳能和日头需求预测。这些预测支持了每天以单一和多个周期运行的储存设施的最佳日程安排。优化在使用分散交易而不是本文件所认为的小时价格方面是创新的,在减少风险方面更具吸引力。与日常高峰和干旱交易的常规方法不同,根据天气预测,多种贸易是有利和机会的。