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Blind non-intrusive appliance load monitoring using graph-based signal processing

机译:使用基于图的信号处理进行盲式非侵入式设备负载监控

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摘要

With ongoing massive smart energy metering deployments, disaggregation of household's total energy consumption down to individual appliances using purely software tools, aka. non-intrusive appliance load monitoring (NALM), has generated increased interest. However, despite the fact that NALM was proposed over 30 years ago, there are still many open challenges. Indeed, the majority of approaches require training and are sensitive to appliance changes requiring regular re-training. In this paper, we tackle this challenge by proposing a "blind" NALM approach that does not require any training. The main idea is to build upon an emerging field of graph-based signal processing to perform adaptive thresholding, signal clustering and feature matching. Using two datasets of active power measurements with 1min and 8sec resolution, we demonstrate the effectiveness of the proposed method using a state-of-the-art NALM approaches as benchmarks.
机译:随着正在进行的大规模智能能源计量部署,使用纯软件工具(也称为家庭)将家庭的总能源消耗分解为单个设备。非侵入式设备负载监控(NALM)引起了人们的关注。但是,尽管NALM是30年前提出的,但仍然存在许多公开挑战。实际上,大多数方法都需要培训,并且对需要定期重新培训的设备更改很敏感。在本文中,我们通过提出一种不需要任何培训的“盲” NALM方法来应对这一挑战。主要思想是在新兴的基于图的信号处理领域上进行自适应阈值处理,信号聚类和特征匹配。使用两个具有1min和8sec分辨率的有功功率测量数据集,我们使用最新的NALM方法作为基准,证明了该方法的有效性。

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