The empirical mode decomposition (EMD) method and its variants have been extensively employed in the load and renewable forecasting literature. Using this multiresolution decomposition, time series (TS) related to the historical load and renewable generation are decomposed into several intrinsic mode functions (IMFs), which are less non-stationary and non-linear. As such, the prediction of the components can theoretically be carried out with notably higher precision. The EMD method is prone to several issues, including modal aliasing and boundary effect problems, but the TS decomposition-based load and renewable generation forecasting literature primarily focuses on comparing the performance of different decomposition approaches from the forecast accuracy standpoint; as a result, these problems have rarely been scrutinized. Underestimating these issues can lead to poor performance of the forecast model in real-time applications. This paper examines these issues and their importance in the model development stage. Using real-world data, EMD-based models are presented, and the impact of the boundary effect is illustrated.
翻译:在载荷和可再生预报文献中广泛采用了经验模式分解方法及其变体。使用这种多分辨率分解,与历史负荷和可再生能源相关的时间序列被分解成若干内在模式功能(基金组织),这些功能不那么固定和非线性。因此,从理论上讲,对部件的预测可以特别精确地进行。EMD方法容易出现若干问题,包括模型化别和边界影响问题,但基于TS的分解负担和可再生能源预测文献主要侧重于从预测的准确性角度比较不同分解方法的性能;因此,这些问题很少受到审查。低估这些问题可能导致预测模型在实时应用中的性能不佳。本文研究这些问题及其在模型开发阶段的重要性。本文件使用真实世界数据,介绍了以EMD为基础的模型,并说明了边界影响的影响。