With the booming growth of advanced digital technologies, it has become possible for users as well as distributors of energy to obtain detailed and timely information about the electricity consumption of households. These technologies can also be used to forecast the household's electricity consumption (a.k.a. the load). In this paper, we investigate the use of Variational Mode Decomposition and deep learning techniques to improve the accuracy of the load forecasting problem. Although this problem has been studied in the literature, selecting an appropriate decomposition level and a deep learning technique providing better forecasting performance have garnered comparatively less attention. This study bridges this gap by studying the effect of six decomposition levels and five distinct deep learning networks. The raw load profiles are first decomposed into intrinsic mode functions using the Variational Mode Decomposition in order to mitigate their non-stationary aspect. Then, day, hour, and past electricity consumption data are fed as a three-dimensional input sequence to a four-level Wavelet Decomposition Network model. Finally, the forecast sequences related to the different intrinsic mode functions are combined to form the aggregate forecast sequence. The proposed method was assessed using load profiles of five Moroccan households from the Moroccan buildings' electricity consumption dataset (MORED) and was benchmarked against state-of-the-art time-series models and a baseline persistence model.
翻译:随着先进数字技术的蓬勃发展,用户和能源经销商有可能获得关于家庭用电的详细和及时的信息,这些技术也可用于预测家庭用电量(负负负负负负负负负负负负负),在本文中,我们调查使用变式模式分解和深学习技术来提高负载预报问题的准确性。虽然在文献中研究了这一问题,选择了适当的分解等级和提供更好预测性能的深层次学习技术,但相对较少注意。这一研究通过研究六分解等级和五个不同的深层学习网络的影响,弥补了这一差距。原始负荷剖面首次通过使用变式模式分解变形功能转化为内在模式功能,以缓解其非静止性方面。随后,日、小时和过去的电力消耗数据作为三维输入序列输入四级Wavelet Decomposition网络模型。最后,与不同内在模式功能有关的预测序列被合并为综合预测序列。拟议的方法是利用摩洛哥五套电量基准和摩洛哥家庭基准数据(摩洛哥电量模型)的负载基准模型评估了摩洛哥五套电量。