Department of Technology, School of Science and Technology, The Open University of Hong Kong, Hong Kong, China.
Department of Computer Engineering, National Institute of Technology Kurukshetra, Kurukshetra 136119, India.
Sensors (Basel). 2021 Apr 30;21(9):3133. doi: 10.3390/s21093133.
Global warming is a leading world issue driving the common social objective of reducing carbon emissions. People have witnessed the melting of ice and abrupt changes in climate. Reducing electricity usage is one possible method of slowing these changes. In recent decades, there have been massive worldwide rollouts of smart meters that automatically capture the total electricity usage of houses and buildings. Electricity load disaggregation (ELD) helps to break down total electricity usage into that of individual appliances. Studies have implemented ELD models based on various artificial intelligence techniques using a single ELD dataset. In this paper, a powerline noise transformation approach based on optimized complete ensemble empirical model decomposition and wavelet packet transform (OCEEMD-WPT) is proposed to merge the ELD datasets. The practical implications are that the method increases the size of training datasets and provides mutual benefits when utilizing datasets collected from other sources (especially from different countries). To reveal the effectiveness of the proposed method, it was compared with CEEMD-WPT (fixed controlled coefficients), standalone CEEMD, standalone WPT, and other existing works. The results show that the proposed approach improves the signal-to-noise ratio (SNR) significantly.
全球变暖是一个主要的世界问题,推动着减少碳排放这一共同的社会目标。人们已经见证了冰的融化和气候的急剧变化。减少电力使用是减缓这些变化的一种可能方法。近几十年来,全球范围内大规模推出了智能电表,这些电表可以自动捕捉房屋和建筑物的总用电量。电力负荷分解(ELD)有助于将总用电量分解为各个电器的用电量。研究已经使用单个 ELD 数据集实施了基于各种人工智能技术的 ELD 模型。在本文中,提出了一种基于优化完全集成经验模态分解和小波包变换(OCEEMD-WPT)的电力线噪声变换方法来合并 ELD 数据集。实际意义在于,该方法增加了训练数据集的规模,并在利用来自其他来源(特别是来自不同国家)的数据集时相互受益。为了揭示所提出方法的有效性,将其与 CEEMD-WPT(固定控制系数)、独立的 CEEMD、独立的 WPT 和其他现有工作进行了比较。结果表明,所提出的方法显著提高了信噪比(SNR)。