4.4 Article

Industrial Datasets with ICS Testbed and Attack Detection Using Machine Learning Techniques

Journal

INTELLIGENT AUTOMATION AND SOFT COMPUTING
Volume 31, Issue 3, Pages 1345-1360

Publisher

TECH SCIENCE PRESS
DOI: 10.32604/iasc.2022.020801

Keywords

SCADA; industrial control system; intrusion detection system; machine learning; anomaly detection

Funding

  1. Deanship of Scientific Research at King Khalid University [R.G.P.1/219/42]

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Industrial control systems (ICS) are vulnerable to various attacks, but an innovative testbed using real-time operational technology network traffic and machine learning techniques can enhance intrusion detection for these systems.
Industrial control systems (ICS) are the backbone for the implementation of cybersecurity solutions. They are susceptible to various attacks, due to openness in connectivity, unauthorized attempts, malicious attacks, use of more commercial off the shelf (COTS) software and hardware, and implementation of Internet protocols (IP) that exposes them to the outside world. Cybersecurity solutions for Information technology (IT) secured with firewalls, intrusion detection/protection systems do nothing much for Operational technology (OT) ICS. An innovative concept of using real operational technology network traffic-based testbed, for cyber-physical system simulation and analysis, is presented. The testbed is equipped with real-time attacks using in-house penetration test tool with reconnaissance, interception, and firmware analysis scenarios. The test cases with different real-time hacking scenarios are implemented with the ICS cyber test kit, and its industrial datasets are captured which can be utilized for Deep packet inspection (DPI). The DPI provides more visibility into the contents of OT network traffic based on OT protocols. The Machine learning (ML) techniques are deployed for cyber-attack detection of datasets from the cyber kit. The performance metrics such as accuracy, precision, recall, F1 score are evaluated and cross validated for different ML algorithms for anomaly detection. The decision tree (DT) ML technique is optimized with pruning method which provides an attack detection accuracy of 96.5%. The deep learning (DL) techniques has been used recently for enhanced OT intrusion detection performances.

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