Non-intrusive load monitoring (NILM) or energy disaggregation is an inverse problem whereby the goal is to extract the load profiles of individual appliances, given an aggregate load profile of the mains of a home. NILM could help identify the power usage patterns of individual appliances in a home, and thus, could help realize novel energy conservation schemes for smart homes. In this backdrop, this work proposes a novel deep-learning approach to solve the NILM problem and a few related problems as follows. 1) We build upon the reputed seq2-point convolutional neural network (CNN) model to come up with the proposed seq2-[3]-point CNN model to solve the (home) NILM problem and site-NILM problem (basically, NILM at a smaller scale). 2) We solve the related problem of appliance identification by building upon the state-of-the-art (pre-trained) 2D-CNN models, i.e., AlexNet, ResNet-18, and DenseNet-121, which are trained upon two custom datasets that consist of Wavelets and short-time Fourier transform (STFT)-based 2D electrical signatures of the appliances. 3) Finally, we do some basic qualitative inference about an individual appliance's health by comparing the power consumption of the same appliance across multiple homes. Low-frequency REDD dataset is used to train and test the proposed deep learning models for all problems, except site-NILM where REFIT dataset has been used. As for the results, we achieve a maximum accuracy of 94.6\% for home-NILM, 81\% for site-NILM, and 88.9\% for appliance identification (with Resnet-based model).
翻译:非侵入性负载监测(NILM)或能源分解是一个反向问题,因为考虑到家庭主干的总负载剖面剖面剖面剖析,目标是提取个别电器的负荷剖面剖面剖面剖面。 NILM可以帮助确定家中个别电器的电力使用模式,从而帮助实现智能家庭的新节能计划。 在这一背景下,这项工作提出了一种创新的深层次学习方法,以解决NILM问题和以下几个相关问题。 1)我们利用重塑的后继2点点点点神经神经神经网络(CNN)模型,提出拟议的后继2点[3]点CNN模型,解决(家庭主干线)问题和站点-NILM问题(基本上,NILM),从而解决了相关的适应性识别问题,为此,我们利用了最新版(预培训的)2D-CNN模型,例如,AlexNet,ResNet-18,和DenseNet-121,这是根据两个由波流Asal Asir 和短时间列列列列列列列列列列列的电主机的直路路路数据转换, 用于计算机的系统使用一个测试网站。