Published 12-09-2023
Keywords
- Cognitive AI,
- Advanced Persistent Threats,
- Industrial Control Systems,
- Machine Learning
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
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Abstract
The detection and mitigation of Advanced Persistent Threats (APTs) in Industrial Control Systems (ICS) are crucial for maintaining the integrity, safety, and functionality of critical infrastructure. Traditional cybersecurity methods often fail to adequately address the evolving, stealthy nature of APTs. Cognitive Artificial Intelligence (AI), particularly through its ability to adapt and reason in real-time, provides a promising approach for identifying and mitigating APTs within ICS environments. This paper examines the role of Cognitive AI in detecting APTs by utilizing advanced machine learning algorithms, anomaly detection systems, and knowledge-based reasoning. We discuss the integration of AI with ICS for enhanced threat detection, focusing on AI’s ability to learn from data patterns and dynamically adapt to new and evolving threats. The research highlights the importance of cognitive models in analyzing complex data streams from industrial systems, providing a sophisticated defense mechanism that surpasses conventional security approaches. Furthermore, we explore practical applications, case studies, and future directions for the development and implementation of Cognitive AI in industrial cybersecurity.
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References
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