Energy disaggregation estimates appliance-by-appliance electricity consumption from a single meter that measures the whole home's electricity demand. Compared with intrusive load monitoring, NILM (Non-intrusive load monitoring) is low cost, easy to deploy, and flexible. In this paper, we propose a new method, coined IMG-NILM, that utilises convolutional neural networks (CNN) to disaggregate electricity data represented as images. Instead of the traditional approach of dealing with electricity data as time series, IMG-NILM transforms time series into heatmaps with higher electricity readings portrayed as 'hotter' colours. The image representation is then used in CNN to detect the signature of an appliance from aggregated data. IMG-NILM is robust and flexible with consistent performance on various types of appliances; including single and multiple states. It attains a test accuracy of up to 93% on the UK-Dale dataset within a single house, where a substantial number of appliances are present. In more challenging settings where electricity data is collected from different houses, IMG-NILM attains also a very good average accuracy of 85%.
翻译:与侵扰式负载监测相比,NILM(非侵入式负载监测)成本低、容易部署和灵活。在本文中,我们提出了一种新的方法,即催生的IMG-NILM, 利用革命性神经网络(CNN)对作为图像的电力数据进行分类。IMG-NILM将时间序列转换成热图,以更高的电读数描述为“热电”颜色。然后,CNN使用图像表示法来检测综合数据中的电源的签名。IMG-NILM是稳健和灵活的,在各种类型的电器上,包括单一和多个状态上都具有一致性能。它在一个有大量电器的单一房屋内,在英国-Dale数据集中实现了高达93%的测试精确度。在从不同房屋收集电力数据的更具挑战性的环境中,IMG-NILM还实现了85的非常平均精确度。