SecureCPS: Cognitive inspired framework for detection of cyber attacks in cyber–physical systems

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In the era of autonomous systems, the security is indispensable module for flexible computing environment. Due to increased computer power and network speed, a new computing paradigm, such as cognitive inspired computing, will emerge. Such a paradigm provides human-centered services that are convenient and enjoyable at any time, anywhere, and on any device. On the foundation of smart city environment, human computer interaction, intelligent services, and universal device connectivity, Cyber Physical Computing for Cyber Physical systems has recently been investigated. However, in this proposal, a cognitive inspired framework for securing CPS is scrutinized. The cognitive ability is conceded to the search engines by updating the PageRank ranking methodology. The proposed framework, named SecureCPS is trained with real time collective dataset for marking the relevancy of web page with the support the facial expressions. The eye regions are marked using Focal Point Detector algorithm. The framework is validated with machine learning models and resulted in achieving 98.51% accuracy and its outperforms the existing frameworks.

论文关键词:Cognitive-inspired,Cognitive sciences,Artificial intelligence,Machine learning,Cyber physical systems

论文评审过程:Received 25 October 2021, Revised 6 February 2022, Accepted 19 February 2022, Available online 21 March 2022, Version of Record 21 March 2022.

论文官网地址:https://doi.org/10.1016/j.ipm.2022.102914