TL;DR
This paper introduces CamAL, a weakly supervised deep learning framework for appliance localization in smart meters, reducing the need for costly appliance-level labels and outperforming existing methods.
Contribution
CamAL is a novel weakly supervised approach that localizes appliance patterns using only appliance presence data, eliminating the need for detailed labels.
Findings
CamAL outperforms existing weakly supervised baselines.
CamAL requires significantly fewer labels than fully supervised methods.
Experimental results on four real-world datasets validate CamAL's effectiveness.
Abstract
Improving smart grid system management is crucial in the fight against climate change, and enabling consumers to play an active role in this effort is a significant challenge for electricity suppliers. In this regard, millions of smart meters have been deployed worldwide in the last decade, recording the main electricity power consumed in individual households. This data produces valuable information that can help them reduce their electricity footprint; nevertheless, the collected signal aggregates the consumption of the different appliances running simultaneously in the house, making it difficult to apprehend. Non-Intrusive Load Monitoring (NILM) refers to the challenge of estimating the power consumption, pattern, or on/off state activation of individual appliances using the main smart meter signal. Recent methods proposed to tackle this task are based on a fully supervised…
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