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Optimization of maintenance strategies for railway track-bed considering probabilistic degradation models and different reliability levels

Sara Bressi, João Santos, Massimo Losa

2020Reliability Engineering & System Safety90 citationsDOIOpen Access PDF

Abstract

An optimization-based maintenance scheduling framework is an essential tool to plan the necessary investment to maintain the required performance of a railway line. In the present study, a methodology is proposed to minimize the present value of the life cycle maintenance costs and maximize the life cycle quality level of the track-bed considering different levels of reliability. Probabilistic degradation models are developed for predicting the evolution of the railway track condition over time. Afterwards, a Genetic Algorithm based optimization procedure is applied for obtaining a set of optimal solutions taking into account several constrains. The proposed methodology is applied to an Italian railway track-line case study. The results show that it is possible to develop a decision support system to help railway managers to schedule railway track maintenance operations based on the optimal trade-off between maintenance costs and railway track geometry condition for different levels of reliability.

Topics & Concepts

Track (disk drive)Probabilistic logicReliability engineeringReliability (semiconductor)ScheduleScheduling (production processes)Railway lineGenetic algorithmEngineeringLife cycle costingComputer scienceOperations researchMathematical optimizationTransport engineeringOperations managementMathematicsOperating systemQuantum mechanicsPower (physics)Artificial intelligencePhysicsMechanical engineeringRailway Engineering and DynamicsInfrastructure Maintenance and MonitoringTransport and Economic Policies
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