Deep learning based non-intrusive load monitoring with low resolution data from smart meters

Manca, Marco Manolo;Massidda, Luca
2022-01-01

Abstract

A detailed knowledge of the energy consumption and activation status of the electrical appliances in a house is beneficial for both the user and the energy supplier, improving energy awareness and allowing the implementation of consumption management policies through demand response techniques. Monitoring the consumption of individual appliances is certainly expensive and difficult to implement technically on a large scale, so non-intrusive monitoring techniques have been developed that allow the consumption of appliances to be derived from the sole measurement of the aggregate consumption of a house. However, these methodologies often require additional hardware to be installed in the domestic system to measure total energy consumption with high temporal resolution. In this work we use a deep learning method to disaggregate the low frequency energy signal generated directly by the new generation smart meters deployed in Italy, without the need of additional specific hardware. The performances obtained on two reference datasets are promising and demonstrate the applicability of the proposed approach.
2022
Inglese
13
1
39
56
18
Esperti anonimi
internazionale
scientifica
Chain 2; deep learning; energy disaggregation; NILM; non-intrusive load monitoring; smart meter
Goal 7: Affordable and clean energy
no
Manca, Marco Manolo; Massidda, Luca
1.1 Articolo in rivista
info:eu-repo/semantics/article
1 Contributo su Rivista::1.1 Articolo in rivista
262
2
open
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10.2478_caim-2022-0004.pdf

open access

Type: versione editoriale
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