Ensuring the resilience of computer-based railways is increasingly crucial to account for uncertainties and changes due to the growing complexity and criticality of these systems. Although their software relies on strict verification and validation processes following well-established best-practices and certification standards, anomalies can still occur at run-time due to residual faults, system and environmental modifications that were unknown at design-time, or other emergent cyber-threat scenarios. This paper explores run-time control-flow anomaly detection using process mining to enhance the resilience of ERTMS/ETCS L2 (European Rail Traffic Management System/European Train Control System Level 2). Process mining allows learning the actual control flow of the system from its execution traces, thus enabling run-time monitoring through online conformance checking. In addition, anomaly localization is performed through unsupervised machine learning to link relevant deviations to critical system components. We test our approach on a reference ERTMS/ETCS L2 scenario, namely the RBC/RBC Handover, to show its capability to detect and localize anomalies with high accuracy, efficiency, and explainability.

Run-Time Monitoring of ERTMS/ETCS Control Flow by Process Mining / Vitale, Francesco; Zoppi, Tommaso; Flammini, Francesco; Mazzocca, Nicola. - 16236 NCS:(2025), pp. 182-200. [10.1007/978-3-032-10762-6_15]

Run-Time Monitoring of ERTMS/ETCS Control Flow by Process Mining

Francesco Vitale
Primo
;
Nicola Mazzocca
Ultimo
2025

Abstract

Ensuring the resilience of computer-based railways is increasingly crucial to account for uncertainties and changes due to the growing complexity and criticality of these systems. Although their software relies on strict verification and validation processes following well-established best-practices and certification standards, anomalies can still occur at run-time due to residual faults, system and environmental modifications that were unknown at design-time, or other emergent cyber-threat scenarios. This paper explores run-time control-flow anomaly detection using process mining to enhance the resilience of ERTMS/ETCS L2 (European Rail Traffic Management System/European Train Control System Level 2). Process mining allows learning the actual control flow of the system from its execution traces, thus enabling run-time monitoring through online conformance checking. In addition, anomaly localization is performed through unsupervised machine learning to link relevant deviations to critical system components. We test our approach on a reference ERTMS/ETCS L2 scenario, namely the RBC/RBC Handover, to show its capability to detect and localize anomalies with high accuracy, efficiency, and explainability.
2025
9783032107619
9783032107626
Run-Time Monitoring of ERTMS/ETCS Control Flow by Process Mining / Vitale, Francesco; Zoppi, Tommaso; Flammini, Francesco; Mazzocca, Nicola. - 16236 NCS:(2025), pp. 182-200. [10.1007/978-3-032-10762-6_15]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/1024074
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