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Defending the defender: adversarial learning based defending strategy for learning based security methods in Cyber-Physical Systems (CPS)

dc.contributor.authorSheikh, Zakir Ahmad
dc.contributor.authorSingh, Yashwant
dc.contributor.authorSingh, Pradeep Kumar
dc.contributor.authorGonçalves, Paulo
dc.date.accessioned2023-07-07T12:30:28Z
dc.date.available2023-07-07T12:30:28Z
dc.date.issued2023
dc.description.abstractCyber-Physical Systems (CPS) are prone to many security exploitations due to a greater attack surface being introduced by their cyber component by the nature of their remote accessibility or non-isolated capability. Security exploitations, on the other hand, rise in complexities, aiming for more powerful attacks and evasion from detections. The real-world applicability of CPS thus poses a question mark due to security infringements. Researchers have been developing new and robust techniques to enhance the security of these systems. Many techniques and security aspects are being considered to build robust security systems; these include attack prevention, attack detection, and attack mitigation as security development techniques with consideration of confidentiality, integrity, and availability as some of the important security aspects. In this paper, we have proposed machine learning-based intelligent attack detection strategies which have evolved as a result of failures in traditional signature-based techniques to detect zero-day attacks and attacks of a complex nature. Many researchers have evaluated the feasibility of learning models in the security domain and pointed out their capability to detect known as well as unknown attacks (zero-day attacks). However, these learning models are also vulnerable to adversarial attacks like poisoning attacks, evasion attacks, and exploration attacks. To make use of a robust-cum-intelligent security mechanism, we have proposed an adversarial learning-based defense strategy for the security of CPS to ensure CPS security and invoke resilience against adversarial attacks. We have evaluated the proposed strategy through the implementation of Random Forest (RF), Artificial Neural Network (ANN), and Long Short-Term Memory (LSTM) on the ToN_IoT Network dataset and an adversarial dataset generated through the Generative Adversarial Network (GAN) model.pt_PT
dc.description.versioninfo:eu-repo/semantics/publishedVersionpt_PT
dc.identifier.citationSHEIKH, Z.A. [et al.] (2023) - Defending the defender: Adversarial learning based defending strategy for learning based security methods in cyber-physical systems (CPS). Sensors. DOI: 10.3390/s23125459pt_PT
dc.identifier.doi10.3390/s23125459pt_PT
dc.identifier.urihttp://hdl.handle.net/10400.11/8555
dc.language.isoengpt_PT
dc.peerreviewedyespt_PT
dc.publisherMDPIpt_PT
dc.relationFCT—Foundation for Science and Technology, I.P., through IDMEC, under LAETA, project UIDB/50022/2020pt_PT
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/pt_PT
dc.subjectCPS securitypt_PT
dc.subjectCyber securitypt_PT
dc.subjectCyber attackspt_PT
dc.subjectAdversarial attackspt_PT
dc.subjectPoisonous attackspt_PT
dc.subjectEvasion attackspt_PT
dc.subjectGenerative adversarial networkspt_PT
dc.titleDefending the defender: adversarial learning based defending strategy for learning based security methods in Cyber-Physical Systems (CPS)pt_PT
dc.typejournal article
dspace.entity.typePublication
oaire.citation.issue12pt_PT
oaire.citation.startPage5459pt_PT
oaire.citation.titleSensorspt_PT
oaire.citation.volume23pt_PT
person.familyNameGonçalves
person.givenNamePaulo
person.identifier.ciencia-id2816-A2FA-C5A3
person.identifier.orcid0000-0002-8692-7338
person.identifier.ridE-5640-2012
person.identifier.scopus-author-id35853838000
rcaap.rightsopenAccesspt_PT
rcaap.typearticlept_PT
relation.isAuthorOfPublication86a6a234-d690-4c2b-8bee-d58005eebba2
relation.isAuthorOfPublication.latestForDiscovery86a6a234-d690-4c2b-8bee-d58005eebba2

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