Harmonic Loads Classification by Means of Currents’ Physical Components

Electric load identification and classification for smart grid environment can improve the power service for both consumers and producers. The main concept of electric load identification and classification is to disaggregate various loads and categorize them. In this paper, a new practical method f...

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Main Authors: Yuval Beck, Ram Machlev
Format: Article
Language:English
Published: MDPI AG 2019-10-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/12/21/4137
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spelling doaj-e1414a35dd0a4246be449d11892563632020-11-24T22:00:29ZengMDPI AGEnergies1996-10732019-10-011221413710.3390/en12214137en12214137Harmonic Loads Classification by Means of Currents’ Physical ComponentsYuval Beck0Ram Machlev1The Physical Electronics Department, School of Electrical Engineering, Tel Aviv University, Tel Aviv 69978, IsraelThe Physical Electronics Department, School of Electrical Engineering, Tel Aviv University, Tel Aviv 69978, IsraelElectric load identification and classification for smart grid environment can improve the power service for both consumers and producers. The main concept of electric load identification and classification is to disaggregate various loads and categorize them. In this paper, a new practical method for electric load identification and classification is presented. The method is based on using a power monitor to analyze a real measured current waveform of a grid-connected device. A set number of features is extracted using the currents’ physical components-based power theory decomposition. Using currents’ physical components ensures a constant number of features, which maintains the signal’s characteristics regardless of the harmonic content. These features are used to train a supervised classifier based on two techniques: artificial neural network and nearest neighbor search. The theory is outlined, and experimental results are shown. This paper demonstrates high accuracy performance in identifying an electric load from a designated database. Furthermore, the results show a definite classification of an untrained operation state of a device to the closest trained operation state, for example, the excitation angle of a dimmer. In a comparative study, the method is shown to outperform other state-of-the-art techniques, which are based on harmonic components.https://www.mdpi.com/1996-1073/12/21/4137electric load identification and classificationcurrents’ physical components (cpc)artificial neural network (ann)nearest neighborfeature extraction
collection DOAJ
language English
format Article
sources DOAJ
author Yuval Beck
Ram Machlev
spellingShingle Yuval Beck
Ram Machlev
Harmonic Loads Classification by Means of Currents’ Physical Components
Energies
electric load identification and classification
currents’ physical components (cpc)
artificial neural network (ann)
nearest neighbor
feature extraction
author_facet Yuval Beck
Ram Machlev
author_sort Yuval Beck
title Harmonic Loads Classification by Means of Currents’ Physical Components
title_short Harmonic Loads Classification by Means of Currents’ Physical Components
title_full Harmonic Loads Classification by Means of Currents’ Physical Components
title_fullStr Harmonic Loads Classification by Means of Currents’ Physical Components
title_full_unstemmed Harmonic Loads Classification by Means of Currents’ Physical Components
title_sort harmonic loads classification by means of currents’ physical components
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2019-10-01
description Electric load identification and classification for smart grid environment can improve the power service for both consumers and producers. The main concept of electric load identification and classification is to disaggregate various loads and categorize them. In this paper, a new practical method for electric load identification and classification is presented. The method is based on using a power monitor to analyze a real measured current waveform of a grid-connected device. A set number of features is extracted using the currents’ physical components-based power theory decomposition. Using currents’ physical components ensures a constant number of features, which maintains the signal’s characteristics regardless of the harmonic content. These features are used to train a supervised classifier based on two techniques: artificial neural network and nearest neighbor search. The theory is outlined, and experimental results are shown. This paper demonstrates high accuracy performance in identifying an electric load from a designated database. Furthermore, the results show a definite classification of an untrained operation state of a device to the closest trained operation state, for example, the excitation angle of a dimmer. In a comparative study, the method is shown to outperform other state-of-the-art techniques, which are based on harmonic components.
topic electric load identification and classification
currents’ physical components (cpc)
artificial neural network (ann)
nearest neighbor
feature extraction
url https://www.mdpi.com/1996-1073/12/21/4137
work_keys_str_mv AT yuvalbeck harmonicloadsclassificationbymeansofcurrentsphysicalcomponents
AT rammachlev harmonicloadsclassificationbymeansofcurrentsphysicalcomponents
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