This paper proposes a novel risk analysis framework for the optimization of rolling stock management in rail freight shunting operations. We challenge the direct application of Machine Learning (ML) as input for operational decision-making by employing Risk Assessment strategies to evaluate how ML predictions affect the decision-making process. Our approach integrates the ML model’s performance metrics into a Mixed-Integer Linear Programming (MILP) model for shunting operation. A comparative analysis based on real data from the Luxembourgish rail freight company CFL Multimodal across various destinations reveals that a risk assessment approach provides superior performance compared to the direct use of the ML input, reducing the analyzed KPIs. This study demonstrates that the use of a risk assessment framework helps mitigate potential for operational inefficiencies and unfeasibility inherent in ML-dependent models.
Bigi, F., Bosi, T., D'Ariano, A., Viti, F. (2026). Towards Safer Freight Rail Shunting: Integrating MILP and ML Classification Models in a Risk Management Framework. In AIRO Springer Series (pp. 1-11). Springer Nature [10.1007/978-3-031-90095-2_1].
Towards Safer Freight Rail Shunting: Integrating MILP and ML Classification Models in a Risk Management Framework
Bigi, Federico;Bosi, Tommaso;D'Ariano, Andrea;Viti, Francesco
2026-01-01
Abstract
This paper proposes a novel risk analysis framework for the optimization of rolling stock management in rail freight shunting operations. We challenge the direct application of Machine Learning (ML) as input for operational decision-making by employing Risk Assessment strategies to evaluate how ML predictions affect the decision-making process. Our approach integrates the ML model’s performance metrics into a Mixed-Integer Linear Programming (MILP) model for shunting operation. A comparative analysis based on real data from the Luxembourgish rail freight company CFL Multimodal across various destinations reveals that a risk assessment approach provides superior performance compared to the direct use of the ML input, reducing the analyzed KPIs. This study demonstrates that the use of a risk assessment framework helps mitigate potential for operational inefficiencies and unfeasibility inherent in ML-dependent models.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


