ITM Web of Conferences (Jan 2023)
Cyber-Attacks in IoT-enabled Cyber-physical Systems
Abstract
Cyber physical systems (CPS) that are Internet of Things (IoT) enabled might be difficult to secure since security measures designed for general data / value through the development (IT / OT) systems may not work as well in a CPS environment. Consequently, this research provides a two-level ensemble attack detection and attribution framework created for CPS, and more particularly in an industrial control system (ICS). For identifying assaults in unbalanced ICS environments, a decision tree integrated to an unique ensemble deep representation learning model is created at the first extent. An ensemble deep neural network is created for assault features at the second level. Applying actual data collections from the gas pipeline and water treatment system, Findings show that the suggested type is more effective than other competing methods with a similar level of computational complexity.
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