Energies (Dec 2024)

GOOSE Secure: A Comprehensive Dataset for In-Depth Analysis of GOOSE Spoofing Attacks in Digital Substations

  • Oscar A. Tobar-Rosero,
  • Omar A. Roa-Romero,
  • Germán D. Rueda-Carvajal,
  • Alexánder Leal-Piedrahita,
  • Juan F. Botero-Vega,
  • Sergio A. Gutierrez-Betancur,
  • John W. Branch-Bedoya,
  • Germán D. Zapata-Madrigal

DOI
https://doi.org/10.3390/en17236098
Journal volume & issue
Vol. 17, no. 23
p. 6098

Abstract

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Cybersecurity in Critical Infrastructures, especially Digital Substations, has garnered significant attention from both the industrial and academic sectors. A commonly adopted approach to support research in this area involves the use of datasets, which consist of network traffic samples gathered during the operation of an infrastructure. However, creating such datasets from real-world electrical systems presents some challenges: (i) These datasets are often generated under controlled or idealized conditions, potentially overlooking the complexities of real-world operations within a digital substation; (ii) the captured data frequently contain sensitive information, making it difficult to share openly within the research community. This paper presents the creation of a new dataset aimed at advancing cybersecurity research, specifically focused on GOOSE spoofing attacks, given the crucial role of the GOOSE protocol in managing operational and control tasks within Digital Substations. The dataset highlights the real-world impacts of these attacks, demonstrating the execution of unintended operations under different operational scenarios, including both stable conditions and situations involving system failures. The data were collected from a laboratory testbed that replicates the actual functioning of a real digital substation with two bays. The experiments provided insights into key characteristics of GOOSE protocol traffic and the vulnerability of DS infrastructure to Spoofing Attacks.

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