Artificial intelligence in railway infrastructure: current research, challenges, and future opportunities

Author:

Phusakulkajorn Wassamon12,Núñez Alfredo12,Wang Hongrui12,Jamshidi Ali3,Zoeteman Arjen4,Ripke Burchard5,Dollevoet Rolf12,De Schutter Bart6,Li Zili12

Affiliation:

1. Section of Railway Engineering , Faculty of Civil Engineering and Geosciences, , The Netherlands

2. Delft University of Technology , Faculty of Civil Engineering and Geosciences, , The Netherlands

3. Praedico , The Netherlands

4. ProRail , The Netherlands

5. Deutsche Bahn , Germany

6. Delft Center for Systems and Control, Delft University of Technology , The Netherlands

Abstract

Abstract The railway industry has the potential to make a strong contribution to the achievement of various sustainable development goals, by an expansion of its role in the transportation system of different countries. To realize this, complex technological and societal challenges are to be addressed, along with the development of suitable state-of-the-art methodologies fully tailored to the particular needs of the wide variety of railway infrastructure types and conditions. Artificial intelligence (AI) methods have been increasingly and successfully applied to solve practical problems in the railway infrastructure domain for over two decades. This paper proposes a review of the development of AI methods in railway infrastructure. First, we present a survey limited to selected journal papers published between 2010 and 2022. Bibliographical statistics are obtained, showing the increasing number of contributions in this field. Then, we select key AI methodologies and discuss their applications in the railway infrastructure. Next, AI methods for key railway components are analyzed. Finally, current challenges and future opportunities are discussed.

Funder

ProRail and Europe’s Rail Flagship Project IAM4RAIL – Holistic and Integrated Asset Management for Europe’s RAIL System

Publisher

Oxford University Press (OUP)

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