Anomaly Detection Using Power Signature of Consumer Electrical Devices

The use of the smart grid for developing intelligent applications is a current trend of great importance. One advantage lies in the possibility of direct monitoring of all devices connected to the electrical network in order to prevent possible malfunctions. Therefore, this paper proposes a metho...

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Main Authors: CERNAZANU-GLAVAN, C., MARCU, M.
Format: Article
Language:English
Published: Stefan cel Mare University of Suceava 2015-02-01
Series:Advances in Electrical and Computer Engineering
Subjects:
Online Access:http://dx.doi.org/10.4316/AECE.2015.01013
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spelling doaj-52793b36b3a14ce5ac36094f4bdaca032020-11-25T00:13:27ZengStefan cel Mare University of SuceavaAdvances in Electrical and Computer Engineering1582-74451844-76002015-02-01151899410.4316/AECE.2015.01013Anomaly Detection Using Power Signature of Consumer Electrical DevicesCERNAZANU-GLAVAN, C.MARCU, M. The use of the smart grid for developing intelligent applications is a current trend of great importance. One advantage lies in the possibility of direct monitoring of all devices connected to the electrical network in order to prevent possible malfunctions. Therefore, this paper proposes a method for an automatic detection of the malfunctioning of low-intelligence consumer electrical devices. Malfunctioning means any deviation of a household device from its normal operating schedule. The method is based on a comparison technique, consisting in the correlation between the current power signature of a device and an ideal signature (the standard signature provided by the manufacturer). The first step of this method is to achieve a simplified form of power signature which keeps all the original features. Further, the signal is segmented based on the data provided by an event detection algorithm (values of the first derivatives) and each resulting component is approximated using a regression function. The final step consists of an analysis based on the correlation between the computed regression coefficients and the coefficients of the standard signal. Following this analysis all the differences are classified as a malfunctioning of the analyzed device.http://dx.doi.org/10.4316/AECE.2015.01013feature extractionpattern matchingsignal analysissignal processing
collection DOAJ
language English
format Article
sources DOAJ
author CERNAZANU-GLAVAN, C.
MARCU, M.
spellingShingle CERNAZANU-GLAVAN, C.
MARCU, M.
Anomaly Detection Using Power Signature of Consumer Electrical Devices
Advances in Electrical and Computer Engineering
feature extraction
pattern matching
signal analysis
signal processing
author_facet CERNAZANU-GLAVAN, C.
MARCU, M.
author_sort CERNAZANU-GLAVAN, C.
title Anomaly Detection Using Power Signature of Consumer Electrical Devices
title_short Anomaly Detection Using Power Signature of Consumer Electrical Devices
title_full Anomaly Detection Using Power Signature of Consumer Electrical Devices
title_fullStr Anomaly Detection Using Power Signature of Consumer Electrical Devices
title_full_unstemmed Anomaly Detection Using Power Signature of Consumer Electrical Devices
title_sort anomaly detection using power signature of consumer electrical devices
publisher Stefan cel Mare University of Suceava
series Advances in Electrical and Computer Engineering
issn 1582-7445
1844-7600
publishDate 2015-02-01
description The use of the smart grid for developing intelligent applications is a current trend of great importance. One advantage lies in the possibility of direct monitoring of all devices connected to the electrical network in order to prevent possible malfunctions. Therefore, this paper proposes a method for an automatic detection of the malfunctioning of low-intelligence consumer electrical devices. Malfunctioning means any deviation of a household device from its normal operating schedule. The method is based on a comparison technique, consisting in the correlation between the current power signature of a device and an ideal signature (the standard signature provided by the manufacturer). The first step of this method is to achieve a simplified form of power signature which keeps all the original features. Further, the signal is segmented based on the data provided by an event detection algorithm (values of the first derivatives) and each resulting component is approximated using a regression function. The final step consists of an analysis based on the correlation between the computed regression coefficients and the coefficients of the standard signal. Following this analysis all the differences are classified as a malfunctioning of the analyzed device.
topic feature extraction
pattern matching
signal analysis
signal processing
url http://dx.doi.org/10.4316/AECE.2015.01013
work_keys_str_mv AT cernazanuglavanc anomalydetectionusingpowersignatureofconsumerelectricaldevices
AT marcum anomalydetectionusingpowersignatureofconsumerelectricaldevices
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