Affiliation:
1. Institute of Railway Research, University of Huddersfield, Huddersfield HD1 3DH, UK
2. School of Computing and Engineering, University of Huddersfield, Huddersfield HD1 3DH, UK
Abstract
The railway industry forecasts growth in passenger and freight traffic over the next 30 years. This places additional demands on rolling stock depot facilities, many of which were designed and built before the modern age of information technology. This paper explores the potential of improving the efficiency and effectiveness of rolling stock maintenance management to meet the challenges of the near future, by utilising advanced computing techniques. The objective of the work is to create optimised maintenance plans for a fleet of trains, considering optimal use of resources. As a “glue” for joining up functions and operations, a generic Depot and Vehicle ontology (called the Virtual Depot) is introduced. The ontology captures the structures, relationships, and attributes of objects in the Depot (rolling stock, sensors, depot assets, tools, resources, and staff). The ontology is populated with example company and fleet-specific knowledge using an automated knowledge acquisition method. This paper describes the systematic method for the creation of a Virtual Depot. Two particular aspects are discussed in detail—knowledge acquisition of fleet-specific information obtained from a manufacturer’s Vehicle Maintenance Instruction manuals and the construction of a short-term scheduling process within the Virtual Depot. Our evaluation considers the integrative aspects of the method, demonstrating how the ontological structure and its acquired specific information informs and benefits the scheduling process, in particular with respect to schedule optimisation. Results from an initial case study show there is significant potential to optimise short-term maintenance schedules, and the ability to automatically consider resource availability in short-term scheduling is demonstrated.
Funder
European Regional Development Fund
Reference36 articles.
1. McNulty, R. (2011). Realising the potential of GB rail—Report of the Rail Value for Money Study, DfT and ORR.
2. RTS (2023, December 12). Railway Technical Strategy 2020. Available online: https://railtechnicalstrategy.co.uk/wp-content/uploads/2020/11/The-Rail-Technical-Strategy.pdf.
3. An autonomous system for maintenance scheduling data-rich complex infrastructure: Fusing the railways’ condition, planning and cost;Starr;Transp. Res. Part C Emerg. Technol.,2018
4. An Ontological Approach to Support Dysfunctional Analysis for Railway Systems Design;Debbech;J. Univers. Comput. Sci.,2020
5. Umiliacchi, P., Lane, D., and Romano, F. (2011, January 22–26). Predictive maintenance of railway subsystems using an Ontology based modelling approach. Proceedings of the 9th World Conference on Railway Research, Lille, France.