Design and testing of solutions for quality of services and protection from cyberattacks in industrial-type networks with Machine Learning based approaches
Industrial networks are the technological backbone of many critical infrastructures, as they include all the functional components that enable proper monitoring and control of facilities and assets, such as power/energy systems, particularly those that use renewable energy sources (RES), which are becoming increasingly widespread thanks to their sustainability and energy independence benefits. Such widespread adoption makes RES a potentially lucrative target for cyberattacks, due to the potential catastrophic consequences such as: loss of energy production (and related revenues), permanent damage to assets and infrastructure, leakage of commercial information and damage to reputation, regulatory non-compliance and fines, and finally (for interconnected/dependent critical infrastructure) risks to health, safety, and the environment.
Solutions that improve the resilience of the electricity system and the RES included therein represent a strategic advantage for economic and social security.

The proposed prototype, which uses AI/ML-based tools/functionalities, offers innovative anomaly detection strategies based on the observation of the physical behavior of the monitored industrial process. AI/ML-based algorithms extract certain measurements of the system’s physical parameters and process them using a neural network architecture to build a classifier that makes automatic decisions about the system’s behavior and detects faults and potential cyberattacks (e.g., man-in-the-middle, spoofing, etc.).
Areas of application and users include Essential Services Operators (ESO) sector, with a focus on electricity generation and renewable energy networks.


Product 8.5