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Artificial Intelligence Methods in Railway Infrastructure Systems

Application of Data Centric Engineering

  • 1st Edition - August 1, 2026
  • Latest edition
  • Editors: Diogo Ribeiro, Araliya Mosleh, Andreia Meixedo, Abdollah Malekjafarian, Ramin Ghiasi, Meisam Gordan
  • Language: English

Artificial Intelligence Methods in Railway Infrastructure Systems: Application of Data Centric Engineering offers a thorough exploration of the latest advancements transf… Read more

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Description

Artificial Intelligence Methods in Railway Infrastructure Systems: Application of Data Centric Engineering offers a thorough exploration of the latest advancements transforming railway management. With a strong focus on practical and theoretical approaches, this book introduces innovative AI techniques including machine learning, computer vision, and predictive analytics. These methodologies are presented in the context of railway infrastructure, empowering engineers and researchers to utilize cutting-edge technology for enhanced system reliability. By bridging the gap between theory and real-world applications, the book enables early detection of anomalies, supporting proactive maintenance strategies and improved operational efficiency in railway networks.

This book acts as a vital reference for those seeking to understand and implement AI-driven solutions in railway systems, encouraging the adoption of anticipatory strategies to shape future trends. Readers will discover how AI innovations can streamline operations, optimize resource allocation, and significantly improve network safety, making it an essential guide for professionals looking to stay ahead in the evolving field of railway infrastructure management.

Key features

  • Covers the diverse array of Artificial Intelligence (AI) tools that can address the complex challenges associated with railway infrastructure management
  • Explores AI capabilities in the continuous monitoring of railway infrastructure, providing real-time insights into the condition of tracks, bridges, tunnels, and other critical assets
  • Leverages the potential of AI in the automatization of inspection processes, reducing the need for manual intervention and improving the efficiency and accuracy of assessments
  • Presents AI algorithms for early anomaly detection or deviations from normal operating conditions, alerting infrastructure managers to potential issues before they escalate

Readership

Stakeholders in the railway sector who need to understand AI methodologies such as machine learning, computer vision and predictive analytics and their practical implementation in infrastructure management, risk and early anomaly detection; railway industry professionals, civil engineers working in the railway sector, transportation managers, postgraduate researchers and academics with an interest in railway infrastructure and transportation studies, risk assessment and management, government officials and policymakers tasked with developing standards and regulations

Table of contents

1. AI Methods in Railway Infrastructure Systems

2. An intelligent bridge condition monitoring system

3. An intelligent track condition monitoring system via wayside strategies

4. Smart wayside solutions for railway vehicle damage identification and unbalanced loads

5. Drive by methodologies for smart condition monitoring of railway tracks

6. Drive by methodologies for smart condition monitoring of railway bridges

7. Drive by methodologies for smart condition monitoring of rolling stock

8. Integrating artificial intelligence into railway digital twin frameworks

9. AI-based approach for wheel defect detection and severity classification using track-side monitoring

10. AI-driven strategies for predictive maintenance in climates changing

11. The role of machine learning in automated inspection of railway bridges

12. Machine learning algorithms for enhanced remote assessment of railway tunnels

13. Challenges and innovations: successful implementation of AI in railway noise and vibration control

14. AI-enhanced forecasting of traffic-induced dynamic loads on railways

15. AI applications for dynamic train network management

16. Smart sensors and AI: enhancing performance in railway transition areas

17. From insight to action: implementing AI-based strategies for railway switches and crossings

18. AI-based pantograph-catenary monitoring system for railway operation

19. IoT-based monitoring of railway infrastructures with artificial intelligence

20. Structural condition monitoring of retrofitted railway bridges using machine learning

21. AI applications in rail transport and navigating the tracks

22. Prediction of track geometry degradation using artificial intelligence

23. The role of AI in shaping the future of railway systems

24. AI ethical, juridical and trustworthiness issues

Product details

  • Edition: 1
  • Latest edition
  • Published: August 1, 2026
  • Language: English

About the editors

DR

Diogo Ribeiro

Dr Ribeiro is Professor at Instituto Superior de Engenharia do Porto in Portugal. He is a Member of the Institute of R&D in Structures and Construction (CONSTRUCT), coordinator or researcher on more than 20 R&D projects funded by industry, FCT and EU programs in the field of railway infrastructures and digital construction
Affiliations and expertise
Professor, Instituto Superior de Engenharia do Porto, Portugal

AM

Araliya Mosleh

Araliya Mosleh is a senior researcher at the Faculty of Civil Engineering, University of Porto. She obtained her PhD degree in 2016 from the University of Aveiro, Portugal. Since then she has actively engaged in 9 national and international projects in the field of railway infrastructure. She was a visiting researcher at Bundeswehr University (2015), Wollongong University (2017), and Evoleo Company (2019)
Affiliations and expertise
Faculdade de Engenharia da Universidade do Porto, Portugal

AM

Andreia Meixedo

Andreia Meixedo holds a Master in Structural Engineering (2012) and a PhD in Civil Engineering (2021), all from the University of Porto. Her main research experience is related to damage identification, structural health monitoring, machine learning, railway infrastructures, wayside and onboard condition monitoring; weigh-in-motion; advanced models for analysis of the bridge-track-train dynamic interaction, structural testing and experimentation, model calibration and validation
Affiliations and expertise
Faculdade de Engenharia da Universidade do Porto, Portugal

AM

Abdollah Malekjafarian

Dr. Abdollah Malekjafarian is currently an Assistant Professor and leader of the “Structural Dynamics and Assessment Laboratory (SDA-Lab)”, in the School of Civil Engineering at University College Dublin (UCD), in Ireland. He received his PhD in Civil Engineering from UCD in 2016. His main areas of research interest are structural dynamics and random vibrations for civil infrastructure including wind turbines and transport Infrastructure. Dr. Malekjafarian is also the Coordinator of the WindLEDeRR project (Lifetime Extension Decommissioning Repowering Repurposing), a comprehensive decision support tool for end-of-life wind turbines in Ireland.

Affiliations and expertise
School of Civil Engineering, University College Dublin, Ireland

RG

Ramin Ghiasi

Dr Ramin Ghiasi is a Postdoctoral Research Fellow at the School of Civil Engineering, University College Dublin, Ireland. His research interests encompass civil structure and infrastructure health monitoring (including transport infrastructure, offshore wind turbines, and tall buildings), the application of AI and optimization methods in civil engineering, and the creation of IoT-based monitoring systems

Affiliations and expertise
University College Dublin, Ireland

MG

Meisam Gordan

Dr Meisam Gordan is currently a Postdoctoral Research Fellow at University College Dublin, working on the Di-Rail project, which focuses on automated and rapid fault diagnosis of railway tracks using in-service train measurements. His research interests include: structural health monitoring, data mining, critical infrastructure resilience, Industry 4.0, big data and smart cities
Affiliations and expertise
University College Dublin, Ireland