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CGAPP: A continuous group authentication privacy-preserving platform for industrial scene

Espín López, Juan Manuel; Huertas Celdran, Alberto; Esquembre, Francisco; Martínez Pérez, Gregorio; Marín-Blázquez, Javier G (2023). CGAPP: A continuous group authentication privacy-preserving platform for industrial scene. Journal of Information Security and Applications, 78:103622.

Abstract

In Industry 4.0, security begins with the workers’ authentication, which can be done individually or in groups. Recently, group authentication is gaining momentum, allowing users to authenticate as group members without the need to specify the particular individual. Continuous authentication and federated learning are promising techniques that might help group authentication by providing privacy, by its own design, and extra security compared to traditional methods based on passwords, tokens, or biometrics. However, these techniques have not previously been combined or evaluated for authenticating workers in Industry 4.0. Thus, this paper proposes a novel continuous group authentication privacy-preserving (CGAPP)platform that is suitable for the industry. The CGAPP platform incorporates statistical data from workers’ smartphones and employs federated learning-based outlier detection for group worker authentication while ensuring the privacy of personal data vectors. A series of experiments were performed to measure the framework’s suitability and address the following research questions: (i) What is the cost of using FL compared to full data access in industrial scenarios? (ii) How robust is federated learning against adversarial attacks, specifically, how much malicious data is required to deceive the model? and (iii) How much noise is required to disrupt the authentication system? The results demonstrate the effectiveness of the CGAPP platform in the industry since it provides factory safety while preserving privacy. This platform achieves an accuracy of 92%, comparable to the 96% obtained by traditional approaches in the literature that do not address privacy concerns. The platform’s robustness is tested against attacks in the second and third experiments, and various countermeasures are evaluated. While the CGAPP platform exhibits certain vulnerabilities to data injection attacks, straightforward countermeasures can alleviate them. Nevertheless, the system’s performance experiences a notable impact in the event of a data perturbation attack, and the countermeasures investigated are ineffective in addressing this issue.

Additional indexing

Item Type:Journal Article, refereed, original work
Communities & Collections:03 Faculty of Economics > Department of Informatics
Dewey Decimal Classification:000 Computer science, knowledge & systems
Scopus Subject Areas:Physical Sciences > Software
Physical Sciences > Safety, Risk, Reliability and Quality
Physical Sciences > Computer Networks and Communications
Uncontrolled Keywords:Computer Networks and Communications, Safety, Risk, Reliability and Quality, Software
Scope:Discipline-based scholarship (basic research)
Language:English
Date:1 November 2023
Deposited On:08 Feb 2024 13:57
Last Modified:27 Feb 2025 02:40
Publisher:Elsevier
ISSN:2214-2126
OA Status:Hybrid
Publisher DOI:https://doi.org/10.1016/j.jisa.2023.103622
Other Identification Number:merlin-id:24370
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  • Language: English
  • Licence: Creative Commons: Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0)

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