We present a framework able to combine exposure indicators and predictive analytics using AI-tools and big data architectures for threats detection inside a real industrial IoT sensors network. The described framework, able to fill the gaps between these two worlds, provides mechanisms to internally assess and evaluate products, services and share results without disclosing any sensitive and private information. We analyze the actual state of the art and a possible future research on top of a real case scenario implemented into a technological platform being developed under the H2020 ECHO project, for sharing and evaluating cybersecurity relevant informations, increasing trust and transparency among different stakeholders.
Combining exposure indicators and predictive analytics for threats detection in real industrial IoT sensor networks / Brignoli, M. A.; Mazzaro, S.; Fortunato, G.; Cora, A.; Matta, W.; Romano, S. P.; Ruggiero, B.; Coscia, V.. - (2020), pp. 423-428. (Intervento presentato al convegno 2020 IEEE International Workshop on Metrology for Industry 4.0 and IoT, MetroInd 4.0 and IoT 2020 tenutosi a ita nel 2020) [10.1109/MetroInd4.0IoT48571.2020.9138184].
Combining exposure indicators and predictive analytics for threats detection in real industrial IoT sensor networks
Romano S. P.;
2020
Abstract
We present a framework able to combine exposure indicators and predictive analytics using AI-tools and big data architectures for threats detection inside a real industrial IoT sensors network. The described framework, able to fill the gaps between these two worlds, provides mechanisms to internally assess and evaluate products, services and share results without disclosing any sensitive and private information. We analyze the actual state of the art and a possible future research on top of a real case scenario implemented into a technological platform being developed under the H2020 ECHO project, for sharing and evaluating cybersecurity relevant informations, increasing trust and transparency among different stakeholders.File | Dimensione | Formato | |
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