Attack Rules: An Adversarial Approach to Generate Attacks for Industrial Control Systems using Machine Learning


연구 분야: Infrastructure



학회: CPSIoTSec '21: Proceedings of the 2th Workshop on CPS&IoT Security and Privacy


초록

Adversarial learning is used to test the robustness of machine learning algorithms under attack and create attacks that deceive the anomaly detection methods in Industrial Control System (ICS). Given that security assessment of an ICS demands that an exhaustive set of possible attack patterns is studied, in this work, we propose an association rule mining-based attack generation technique. The technique has been implemented using data from a Secure Water Treatment plant. The proposed technique was able to generate more than 110,000 attack patterns constituting a vast majority of new attack vectors which were not seen before. Automatically generated attacks improve our understanding of the potential attacks and enable the design of robust attack detection techniques.


Author Profile
Muhammad Azmi Umer

DHA Suffa University & Karachi Institute of Economics and Technology Karachi Pakistan

Andorra
Author Profile
Chuadhry Mujeeb Ahmed

University of Strathclyde Glasgow United Kingdom

United Kingdom
Author Profile
Muhammad Taha Jilani

Karachi Institute of Economics and Technology Karachi Pakistan

Andorra

📄 논문 정보

발행 연도 2021년
인용수 14
출판 국가 United Kingdom, Andorra
사이트 ACM
좋아요 수 0

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