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Autores principales: Petralia, Adrien, Boniol, Paul, Charpentier, Philippe, Palpanas, Themis
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2506.05912
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author Petralia, Adrien
Boniol, Paul
Charpentier, Philippe
Palpanas, Themis
author_facet Petralia, Adrien
Boniol, Paul
Charpentier, Philippe
Palpanas, Themis
contents In recent years, electricity suppliers have installed millions of smart meters worldwide to improve the management of the smart grid system. These meters collect a large amount of electrical consumption data to produce valuable information to help consumers reduce their electricity footprint. However, having non-expert users (e.g., consumers or sales advisors) understand these data and derive usage patterns for different appliances has become a significant challenge for electricity suppliers because these data record the aggregated behavior of all appliances. At the same time, ground-truth labels (which could train appliance detection and localization models) are expensive to collect and extremely scarce in practice. This paper introduces DeviceScope, an interactive tool designed to facilitate understanding smart meter data by detecting and localizing individual appliance patterns within a given time period. Our system is based on CamAL (Class Activation Map-based Appliance Localization), a novel weakly supervised approach for appliance localization that only requires the knowledge of the existence of an appliance in a household to be trained. This paper appeared in ICDE 2025.
format Preprint
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publishDate 2025
record_format arxiv
spellingShingle DeviceScope: An Interactive App to Detect and Localize Appliance Patterns in Electricity Consumption Time Series
Petralia, Adrien
Boniol, Paul
Charpentier, Philippe
Palpanas, Themis
Machine Learning
Signal Processing
In recent years, electricity suppliers have installed millions of smart meters worldwide to improve the management of the smart grid system. These meters collect a large amount of electrical consumption data to produce valuable information to help consumers reduce their electricity footprint. However, having non-expert users (e.g., consumers or sales advisors) understand these data and derive usage patterns for different appliances has become a significant challenge for electricity suppliers because these data record the aggregated behavior of all appliances. At the same time, ground-truth labels (which could train appliance detection and localization models) are expensive to collect and extremely scarce in practice. This paper introduces DeviceScope, an interactive tool designed to facilitate understanding smart meter data by detecting and localizing individual appliance patterns within a given time period. Our system is based on CamAL (Class Activation Map-based Appliance Localization), a novel weakly supervised approach for appliance localization that only requires the knowledge of the existence of an appliance in a household to be trained. This paper appeared in ICDE 2025.
title DeviceScope: An Interactive App to Detect and Localize Appliance Patterns in Electricity Consumption Time Series
topic Machine Learning
Signal Processing
url https://arxiv.org/abs/2506.05912