Literatura académica sobre el tema "Cyberprotection"
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Artículos de revistas sobre el tema "Cyberprotection"
Chevardin, V., O. Yurchenko, O. Zaluzhnyi y Ye Peleshok. "Analysis of adversarial attacks on the machine learning models of cyberprotection systems." Communication, informatization and cybersecurity systems and technologies, n.º 4 (21 de diciembre de 2023): 100–109. http://dx.doi.org/10.58254/viti.4.2023.09.100.
Texto completoNespoli, Pantaleone, Daniel Díaz-López y Félix Gómez Mármol. "Cyberprotection in IoT environments: A dynamic rule-based solution to defend smart devices". Journal of Information Security and Applications 60 (agosto de 2021): 102878. http://dx.doi.org/10.1016/j.jisa.2021.102878.
Texto completoPancorbo Crespo, Jaime, Luis Guerrero Gomez y Javier Gonzalo Arias. "Autonomous Shipping and Cybersecurity". Ciencia y tecnología de buques 13, n.º 25 (31 de julio de 2019): 19–26. http://dx.doi.org/10.25043/19098642.185.
Texto completoMoore, Michael Roy, Robert A. Bridges, Frank L. Combs y Adam L. Anderson. "Data-Driven Extraction of Vehicle States From CAN Bus Traffic for Cyberprotection and Safety". IEEE Consumer Electronics Magazine 8, n.º 6 (1 de noviembre de 2019): 104–10. http://dx.doi.org/10.1109/mce.2019.2928577.
Texto completoДрейс, Юрій y Леонід Деркач. "БАЗОВА МНОЖИНА УЗАГАЛЬНЕНИХ КРИТЕРІЇВ ВІДНЕСЕННЯ ОБ’ЄКТІВ ДО КРИТИЧНОЇ ІНФРАСТРУКТУРИ ДЕРЖАВИ". Ukrainian Scientific Journal of Information Security 27, n.º 1 (30 de abril de 2021): 13–20. http://dx.doi.org/10.18372/2225-5036.27.15807.
Texto completoMuravskyi, Volodymyr, Vasyl Muravskyi y Oleh Shevchuk. "Classification of stakeholders (users) of accounting information for the enterprise cybersecurity purposes". Herald of Economics, n.º 1(99) (1 de febrero de 2021): 83. http://dx.doi.org/10.35774/visnyk2021.01.083.
Texto completoКорченко, Олександр Григорович, Ігор Вадимович Логінов y Сергій Олександрович Скворцов. "Stationary systems of cyberattacks detection and prevention for cyberprotection and cybercounterintelli-gence (by example USA)". Ukrainian Scientific Journal of Information Security 25, n.º 1 (25 de abril de 2019). http://dx.doi.org/10.18372/2225-5036.25.13664.
Texto completoTesis sobre el tema "Cyberprotection"
Shrivastwa, Ritu Ranjan. "Enhancements in Embedded Systems Security using Machine Learning". Electronic Thesis or Diss., Institut polytechnique de Paris, 2023. http://www.theses.fr/2023IPPAT051.
Texto completoThe list of connected devices (or IoT) is growing longer with time and so is the intense vulnerability to security of the devices against targeted attacks originating from network or physical penetration, popularly known as Cyber Physical Security (CPS) attacks. While security sensors and obfuscation techniques exist to counteract and enhance security, it is possible to fool these classical security countermeasures with sophisticated attack equipment and methodologies as shown in recent literature. Additionally, end node embedded systems design is bound by area and is required to be scalable, thus, making it difficult to adjoin complex sensing mechanism against cyberphysical attacks. The solution may lie in Artificial Intelligence (AI) security core (soft or hard) to monitor data behaviour internally from various components. Additionally the AI core can monitor the overall device behaviour, including attached sensors, to detect any outlier activity and provide a smart sensing approach to attacks. AI in hardware security domain is still not widely acceptable due to the probabilistic behaviour of the advanced deep learning techniques, there have been works showing practical implementations for the same. This work is targeted to establish a proof of concept and build trust of AI in security by detailed analysis of different Machine Learning (ML) techniques and their use cases in hardware security followed by a series of case studies to provide practical framework and guidelines to use AI in various embedded security fronts. Applications can be in PUFpredictability assessment, sensor fusion, Side Channel Attacks (SCA), Hardware Trojan detection, Control flow integrity, Adversarial AI, etc
Actas de conferencias sobre el tema "Cyberprotection"
Azeez, Nureni Ayofe y Ademolu Oluwatosin. "CyberProtector: Identifying Compromised URLs in Electronic Mails with Bayesian Classification". En 2016 International Conference on Computational Science and Computational Intelligence (CSCI). IEEE, 2016. http://dx.doi.org/10.1109/csci.2016.0184.
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