Digital twins in intrusion detection systems based on deep learning
This work aims to improve the accuracy of attack detection in software and hardware systems by utilizing a digital twin in the form of an algebraic model within intrusion detection systems (IDSs) based on deep learning neural networks (DNNs). This approach addresses the shortcomings of training and...
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| Datum: | 2025 |
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| Hauptverfasser: | , |
| Format: | Artikel |
| Sprache: | English |
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PROBLEMS IN PROGRAMMING
2025
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| Online Zugang: | https://pp.isofts.kiev.ua/index.php/ojs1/article/view/834 |
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| Назва журналу: | Problems in programming |
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Problems in programming| Zusammenfassung: | This work aims to improve the accuracy of attack detection in software and hardware systems by utilizing a digital twin in the form of an algebraic model within intrusion detection systems (IDSs) based on deep learning neural networks (DNNs). This approach addresses the shortcomings of training and dataset imperfections that lead to numerous false positives, undetected intrusions, and weak resistance against adversarial attacks. We propose an IDS architecture that combines deep learning neural networks with an algebraic model at the required level of abstraction. This composition provides high detection accuracy and enables continuous self-learning of the IDS based on model operation and data acquisition, including zero-day attacks. Two examples demonstrate the application of this approach: detecting attacks in the binary code of a software system and in a programmable integrated circuit.Problems in programming 2025; 2: 20-27 |
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