Stammdaten

Titel: Deep learning-based meta-learner strategy for electricity theft detection
Untertitel:
Kurzfassung:

Electricity theft damages power grid infrastructure and is also responsible for huge revenue losses for electric utilities. Integrating smart meters in traditional power grids enables real-time monitoring and collection of consumers’ electricity consumption (EC) data. Based on the collected data, it is possible to identify the normal and malicious behavior of consumers by analyzing the data using machine learning (ML) and deep learning methods. This paper proposes a deep learning-based meta-learner model to distinguish between normal and malicious patterns in EC data. The proposed model consists of two stages. In Fold-0, the ML classifiers extract diverse knowledge and learns based on EC data. In Fold-1, a multilayer perceptron is used as a meta-learner, which takes the prediction results of Fold-0 classifiers as input, automatically learns non-linear relationships among them, and extracts hidden complicated features to classify normal and malicious behaviors. Therefore, the proposed model controls the overfitting problem and achieves high accuracy. Moreover, extensive experiments are conducted to compare its performance with boosting, bagging, standalone conventional ML classifiers, and baseline models published in top-tier outlets. The proposed model is evaluated using a real EC dataset, which is provided by the Energy Informatics Group in Pakistan. The model achieves 0.910 ROC-AUC and 0.988 PR-AUC values on the test dataset, which are higher than those of the compared models.

Schlagworte: Economics and Econometrics, Energy Engineering and Power Technology, Fuel Technology, Renewable Energy, Sustainability and the Environment
Publikationstyp: Beitrag in Zeitschrift (Autorenschaft)
Erscheinungsdatum: 27.09.2023 (Online)
Erschienen in: Frontiers in Energy Research
Frontiers in Energy Research
zur Publikation
 ( Frontiers Media S.A.; M. Rasheed )
Titel der Serie: -
Bandnummer: 11
Heftnummer: -
Erstveröffentlichung: Ja
Version: -
Seite: S. 1 - 13

Versionen

Keine Version vorhanden
Erscheinungsdatum: 27.09.2023
ISBN (e-book): -
eISSN: 2296-598X
DOI: http://dx.doi.org/10.3389/fenrg.2023.1232930
Homepage: -
Open Access
  • Online verfügbar (Open Access)

Zuordnung

Organisation Adresse
Fakultät für Technische Wissenschaften
 
Institut für Artificial Intelligence und Cybersecurity
Universitätsstr. 65-67
A-9020 Klagenfurt
Österreich
  -993705
   aics-office@aau.at
https://www.aau.at/en/aics/
zur Organisation
Universitätsstr. 65-67
AT - A-9020  Klagenfurt

Kategorisierung

Sachgebiete
  • 102 - Informatik
Forschungscluster Kein Forschungscluster ausgewählt
Zitationsindex
  • Science Citation Index Expanded (SCI Expanded)
Informationen zum Zitationsindex: Master Journal List
Peer Reviewed
  • Ja
Publikationsfokus
  • Science to Science (Qualitätsindikator: II)
Klassifikationsraster der zugeordneten Organisationseinheiten:
Arbeitsgruppen
  • Information Systems

Kooperationen

Organisation Adresse
Politecnico di Milano
Piazza Leonardo Da Vinci, 32
20133 Milano
Italien - restliches Italien
Piazza Leonardo Da Vinci, 32
IT - 20133  Milano
King Saud University
Saudi-Arabien
SA  
Cyprus University of Technology
Limassol
Zypern
CY  Limassol
CTL Eurocollege
Zypern
CY  

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