In the realm of contemporary industrial control systems, the necessity for robust anomaly detection and classification is of critical importance. This paper presents an application of neural network technology in a real-world industrial scenario focused on elevator control. We employ two fully-connected neural networks to accomplish both anomaly detection and classification. The first neural network is dedicated to identifying types of anomalies, while the second predicts their magnitudes. Additionally, we integrate formal verification to certify the local robustness of these networks. Our findings not only showcase the practical efficacy of our methodology but also emphasise the crucial role of small neural networks in effectively addressing challenges within industrial settings.
Anomaly Recognition with Trustworthy Neural Networks: a Case Study in Elevator Control / Guidotti, D.; Pandolfo, L.; Pulina, L.. - 3883:(2024), pp. 189-200. (Intervento presentato al convegno 1st International Workshop on Artificial Intelligence for Climate Change, 12th Italian Workshop on Planning and Scheduling, 31st RCRA Workshop on Experimental Evaluation of Algorithms for Solving Problems with Combinatorial Explosion, and SPIRIT Workshop on Strategies, Prediction, Interaction, and Reasoning in Italy, AI4CC-IPS-RCRA-SPIRIT 2024 tenutosi a ita nel 2024).
Anomaly Recognition with Trustworthy Neural Networks: a Case Study in Elevator Control
Guidotti D.;Pandolfo L.;Pulina L.
2024-01-01
Abstract
In the realm of contemporary industrial control systems, the necessity for robust anomaly detection and classification is of critical importance. This paper presents an application of neural network technology in a real-world industrial scenario focused on elevator control. We employ two fully-connected neural networks to accomplish both anomaly detection and classification. The first neural network is dedicated to identifying types of anomalies, while the second predicts their magnitudes. Additionally, we integrate formal verification to certify the local robustness of these networks. Our findings not only showcase the practical efficacy of our methodology but also emphasise the crucial role of small neural networks in effectively addressing challenges within industrial settings.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


