Non-intrusive load monitoring (NILM) as the process of extracting the usage pattern of appliances from the aggregated power signal is among successful approaches aiding residential energy management. In recent years, high volume datasets on power profiles have become available, which has helped make classification methods employed for the NILM purpose more effective and more accurate. However, the presence of multi-mode appliances and appliances with close power values have remained influential in worsening the computational complexity and diminishing the accuracy of these algorithms. To tackle these challenges, we propose an event-based classification process, in the first phase of which the $K$-nearest neighbors method, as a fast classification technique, is employed to extract power signals of appliances with exclusive non-overlapping power values. Then, two deep learning models, which consider the water consumption of some appliances as a novel signature in the network, are utilized to distinguish between appliances with overlapping power values. In addition to power disaggregation, the proposed process as well extracts the water consumption profiles of specific appliances. To illustrate the proposed process and validate its efficiency, seven appliances of the AMPds are considered, with the numerical classification results showing marked improvement with respect to the existing classification-based NILM techniques.
翻译:由于从综合电力信号中提取电器的使用模式是帮助住宅能源管理的成功方法之一,因此非侵入性负载监测(NILM)是利用综合电力信号采集电器使用模式的过程。近年来,在电力剖面上提供了大量数据,这有助于使为NILM目的使用的分类方法更加有效和更加准确。然而,多式电器和具有近功率值的电器的存在仍然对提高计算复杂性和降低这些算法的准确性有影响。为了应对这些挑战,我们建议采用基于事件的分类程序,在第一阶段,采用以美元为最近邻的方法,作为快速分类技术,提取具有独家非重叠功率值的电器的动力信号。然后,使用两个深层次的学习模型,将某些电器的用水量视为网络中的一种新标志,用来区分具有重叠功率值的电器。除了分层之外,拟议的程序还提取了具体电器的水消耗概况。为了说明拟议的过程和验证其效率,考虑采用7种基于AMPd的电器,作为快速分类技术,用于提取具有独家无超重功率功率的电器的电源信号信号。然后,采用两种深思广思广思广思广思广思广思广思广思广思广思广思广思广思广思广思广思。