Improved Intrusion Detection in Cyber-Physical Systems with Explainable AI and Hybrid Optimization

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Abstract

A network of physical and cyber components that exchange feedback with one another is known as a cyber-physical system (CPS). A CPS is necessary for day-to-day operations and authorizes vital infrastructure as it serves as the foundation for cutting-edge smart devices. Robust intrusion detection strategies for CPS settings have been developed in part because of recent developments in explainable artificial intelligence (XAI). The XAI-enabled intrusion detection method in secure cyber-physical systems (XAIID-SCPS) is developed in this work. Detecting and categorizing intrusions on a CPS platform is the primary focus of the suggested XAIID-SCPS approach. A Hybrid Enhanced Glowworm Swarm Optimization (HEGSO) algorithm is used to choose which features to use in the XAIID-SCPS method. With an Enhanced Fruitfly Optimization (EFFO) method for parameter standardization, an Improved Elman Neural Network (IENN) design was used to find intrusions. The XAIID-SCPS method also incorporates the XAI approach and Local interpretable model-agnostic explanation (LIME) to make the black-box method easier to understand and explain. This makes it possible to accurately define attacks. There is a 98.88% chance that the XAIID-SCPS technique will work better than other methods, as shown by the higher simulation numbers.

Year of Conference
2025
Publisher
Institute of Electrical and Electronics Engineers Inc.
ISBN Number
9798331521318 (ISBN)
URL
https://ieeexplore.ieee.org/document/11118490
DOI
10.1109/MPSecICETA64837.2025.11118490
Conference Proceedings
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