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A decision support approach for condition-based maintenance of rails based on big data analysis
Affiliation:1. Scientific Instrumentation Centre, National Laboratory for Civil Engineering, Av. do Brasil 101, Lisboa, 1700-066 Portugal;2. Transportation Department, National Laboratory for Civil Engineering, Av. do Brasil 101, Lisboa, 1700-066 Portugal;3. Mota-Engil, Engenharia e Construção. S.A., Rua Rego Lameiro 38, Porto, 4300-454 Portugal;1. Xi’an Jiaotong–Liverpool University, 111 Ren Ai Road, Suzhou Industrial Park, Suzhou, Jiangsu 215123, China;2. Department of Transport, Technical University of Denmark, 2800 Kgs. Lyngby, Denmark
Abstract:In this paper, a decision support approach is proposed for condition-based maintenance of rails relying on expert-based systems. The methodology takes into account both the actual conditions of the rails (using axle box acceleration measurements and rail video images) and the prior knowledge of the railway track. The approach provides an integrated estimation of the rail health conditions to support the maintenance decisions for a given time period. An expert-based system is defined to analyse interdependency between the prior knowledge of the track (defined by influential factors) and the surface defect measurements over the rail. When the rail health conditions is computed, the different track segments are prioritized, in order to facilitate grinding planning of those segments of rail that are prone to critical conditions. In this paper, real-life rail conditions measurements from the track Amersfoort-Weert in the Dutch railway network are used to show the benefits of the proposed methodology. The results support infrastructure managers to analyse the problems in their rail infrastructure and to efficiently perform a condition-based maintenance decision making.
Keywords:Decision support system  Condition-based maintenance  Rail surface defects  Fuzzy inference system  Axle Box Acceleration (ABA) system
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