We present a winning method of the IEEE DataPort Competition on Day-Ahead Electricity Demand Forecasting: Post-COVID Paradigm. The day-ahead load forecasting approach is based on online forecast combination of multiple point prediction models. It contains four steps: i) data cleaning and preprocessing, ii) a holiday adjustment procedure, iii) training of individual forecasting models, iv) forecast combination by smoothed Bernstein Online Aggregation (BOA). The approach is flexible and can quickly adopt to new energy system situations as they occurred during and after COVID-19 shutdowns. The pool of individual prediction models ranges from rather simple time series models to sophisticated models like generalized additive models (GAMs) and high-dimensional linear models estimated by lasso. They incorporate autoregressive, calendar and weather effects efficiently. All steps contain novel concepts that contribute to the excellent forecasting performance of the proposed method. This holds particularly for the holiday adjustment procedure and the fully adaptive smoothed BOA approach.
翻译:我们提出了在 " 日电需求预测:COVID19关闭期间和之后发生的新能源系统情况 " 上IEE数据站竞争的获胜方法:COVID后模型。日头载荷预测方法以多点预测模型的在线预测组合为基础。它包含四个步骤:(1)数据清理和预处理,(2)假日调整程序,(3)个人预测模型的培训,(4)通过平滑的Bernstein在线聚合(BOA)进行的预测组合。这一方法灵活灵活,可以迅速采用新的能源系统情况。单个预测模型的集合范围从非常简单的时间序列模型到复杂的模型,如Lasso估计的通用添加模型和高维线性线性模型。这些模型都包含自动递增、日历和天气效应,所有步骤都包含有助于拟议方法的出色预测业绩的新概念。这特别适用于节日调整程序和完全适应性平稳的BOA方法。