Applied Sciences (Mar 2020)

Intrusion Detection with Unsupervised Techniques for Network Management Protocols over Smart Grids

  • Rafael Alejandro Vega Vega,
  • Pablo Chamoso-Santos,
  • Alfonso González Briones,
  • José-Luis Casteleiro-Roca,
  • Esteban Jove,
  • María del Carmen Meizoso-López,
  • Benigno Antonio Rodríguez-Gómez,
  • Héctor Quintián,
  • Álvaro Herrero,
  • Kenji Matsui,
  • Emilio Corchado,
  • José Luis Calvo-Rolle

DOI
https://doi.org/10.3390/app10072276
Journal volume & issue
Vol. 10, no. 7
p. 2276

Abstract

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The present research work focuses on overcoming cybersecurity problems in the Smart Grid. Smart Grids must have feasible data capture and communications infrastructure to be able to manage the huge amounts of data coming from sensors. To ensure the proper operation of next-generation electricity grids, the captured data must be reliable and protected against vulnerabilities and possible attacks. The contribution of this paper to the state of the art lies in the identification of cyberattacks that produce anomalous behaviour in network management protocols. A novel neural projectionist technique (Beta Hebbian Learning, BHL) has been employed to get a general visual representation of the traffic of a network, making it possible to identify any abnormal behaviours and patterns, indicative of a cyberattack. This novel approach has been validated on 3 different datasets, demonstrating the ability of BHL to detect different types of attacks, more effectively than other state-of-the-art methods.

Keywords