Short-term forecasts of energy consumption are invaluable for the operation of energy systems, including low voltage electricity networks. However, network loads are challenging to predict when highly desegregated to small numbers of customers, which may be dominated by individual behaviours rather than the smooth profiles associated with aggregate consumption. Furthermore, distribution networks are challenged almost entirely by peak loads, and tasks such as scheduling storage and/or demand flexibility maybe be driven by predicted peak demand, a feature that is often poorly characterised by general-purpose forecasting methods. Here we propose an approach to predict the timing and level of daily peak demand, and a data fusion procedure for combining conventional and peak forecasts to produce a general-purpose probabilistic forecast with improved performance during peaks. The proposed approach is demonstrated using real smart meter data and a hypothetical low voltage network hierarchy comprising feeders, secondary and primary substations. Fusing state-of-the-art probabilistic load forecasts with peak forecasts is found to improve performance overall, particularly at smart-meter and feeder levels and during peak hours, where improvement in terms of CRPS exceeds 10%.
翻译:对能源消耗的短期预测对能源系统的运作,包括低电压电力网络的运作来说是极为宝贵的,然而,网络负荷对于预测何时高度分解给少数客户来说是具有挑战性的,这些客户可能主要为个人行为,而不是与总消费有关的平稳状况;此外,分配网络几乎完全受到高峰负荷的挑战,以及诸如安排储存和/或需求灵活性等任务可能由预测高峰需求驱动,这一特点通常以一般用途预测方法为特征。在这里,我们提出了一个预测每日高峰需求的时间和水平的方法,以及将常规预测和高峰预测结合起来以产生一般用途的概率预测并改进高峰期间的性能的数据合并程序。提议的方法是使用真正的智能计量数据和假设的低电压网络等级,包括饲料商、二级和初级子站。用最高级预报进行最先进的预测,可以改善总体业绩,特别是在智能和饲料商一级,以及高峰时段,因为CRPS的改进率超过10%。