The paper presents Open-FARI, an open-source testbed for evaluating federated learning algorithms for anomaly detection in the railway Industrial Internet of Things domain. Open-FARI uses synthetic data generation modules trained from real train sensor data to generate realistic sensor data of a fleet of trains. Generated data encompass normal and anomalous data, enabling the evaluation of federated learning algorithms for anomaly detection. The paper addresses the lack of testbed and datasets tailored to the railway domain, which represents an obstacle to research on Machine Learning-driven solutions in this domain.
Open-FARI: An Open-source testbed for Federated Anomaly detection in the Railway Industrial Internet of Things
Alessandra Rizzardi
;Sabrina Sicari;Alberto Coen-Porisini
2025-01-01
Abstract
The paper presents Open-FARI, an open-source testbed for evaluating federated learning algorithms for anomaly detection in the railway Industrial Internet of Things domain. Open-FARI uses synthetic data generation modules trained from real train sensor data to generate realistic sensor data of a fleet of trains. Generated data encompass normal and anomalous data, enabling the evaluation of federated learning algorithms for anomaly detection. The paper addresses the lack of testbed and datasets tailored to the railway domain, which represents an obstacle to research on Machine Learning-driven solutions in this domain.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.



