Literatur vom gleichen Autor/der gleichen Autor*in
plus bei Google Scholar

Bibliografische Daten exportieren
 

Increasing the resiliency of power systems in presence of GPS spoofing attacks : A data-driven deep-learning algorithm

Titelangaben

Sabouri, Mohammad ; Siamak, Sara ; Dehghani, Maryam ; Mohammadi, Mohsen ; Asemani, Mohammad Hasan ; Hesamzadeh, Mohammad Reza ; Perić, Vedran S.:
Increasing the resiliency of power systems in presence of GPS spoofing attacks : A data-driven deep-learning algorithm.
In: IET Generation, Transmission & Distribution. Bd. 17 (2023) Heft 20 . - S. 4525-4540.
ISSN 1751-8695
DOI: https://doi.org/10.1049/gtd2.12929

Abstract

The growing use of wireless technologies in power systems has raised concerns about cybersecurity, particularly regarding GPS spoofing attacks (GSAs). These attacks manipulate GPS data, leading to modifications in the phase angle of phasor measurement units (PMUs). In this paper, a Deep-learning GPS-Spoofing Counteraction (DLGSC) algorithm is proposed, utilizing PMU data for GSA detection and PMU data correction. The algorithm incorporates a recurrent neural network (RNN) and a set of long short-term memory (LSTM) units separately, for signal correction after attack detection. Unlike existing methods that struggle with simultaneous attacks or they are static methods, DLGSC tackles these challenges by leveraging deep learning techniques. By selecting appropriate features for GSA detection, DLGSC achieves accurate results. The algorithm is evaluated on standard IEEE 14-bus and IEEE 39-bus power systems, and its performance is compared to statistical, dynamic, and Deep Learning (DL) methods in the literature. Additionally, an experimental setup is designed to validate the algorithm in a laboratory environment. Results demonstrate the easy-implementable DLGSC algorithm's satisfactory real-time performance in various scenarios, such as load variations and noise, achieving over 98% accuracy. Notably, DLGSC is cable of detecting multiple GSAs on different PMUs.

Weitere Angaben

Publikationsform: Artikel in einer Zeitschrift
Begutachteter Beitrag: Ja
Institutionen der Universität: Fakultäten > Fakultät für Ingenieurwissenschaften > Lehrstuhl Intelligentes Energiemanagement > Lehrstuhl Intelligentes Energiemanagement - Univ.-Prof. Dr. Vedran Peric
Titel an der UBT entstanden: Nein
Themengebiete aus DDC: 600 Technik, Medizin, angewandte Wissenschaften > 620 Ingenieurwissenschaften
Eingestellt am: 25 Mär 2026 06:55
Letzte Änderung: 25 Mär 2026 06:55
URI: https://eref.uni-bayreuth.de/id/eprint/96165