We are pleased to share with you all the scientific articles that have been produced so far within the FP3-IAM4Rail project.
You will find below the links to access each of these publications. We hope you enjoy reading them and discovering all the advancements and innovations in the field of railway technology that are being developed within the FP3 project.
These publications reflect the collaborative effort and expertise of all the partners involved, aiming to contribute valuable knowledge to the railway research community. We encourage you to explore the findings and insights presented, and we look forward to continuing to share future outcomes of our work:
- ProRail. Paper on analysis of transition zones using ABA measurements. S. Unsiwilai, L. Wang, A. Núñez, and Z. Li, “Multiple-axle box acceleration measurements at railway transition zones”. Measurement, Volume 213, May 2023, 112688: https://doi.org/10.1016/j.measurement.2023.112688
- ProRail. Review paper TUDelft+PRORAIL+DB on AI technologies for Infrastructure. W. Phusakulkajorn, A. Núñez, H. Wang, A. Jamshidi, A. Zoeteman, B. Ripke, R. Dollevoet, B. De Schutter and Z. Li, “Artificial intelligence in railway infrastructure: current research, challenges and future opportunities”. Intelligent Transportation Infrastructure, Volume 2, 2023, liad016: https://doi.org/10.1093/iti/liad016
- DLR. Paper “Analysis of Local Track Discontinuities and Defects in Railway Switches Based on Track-Side Accelerations”: https://www.mdpi.com/1424-8220/24/2/477
- ProRail. Paper on fundamentals of AI (physics informed NN) towards simulation of beams, T. Kapoor, H. Wang, A. Núñez, and R. Dollevoet, “Physics-informed neural networks for solving forward and inverse problems in complex beam systems.” IEEE Transactions on Neural Networks and Learning Systems, Volume 35, Issue 5, Pages: 5981-5995, May 2024. Intelligence, Volume 133, Part A, July 2024, 108085: Paper: https://doi.org/10.1109/TNNLS.2023.3310585. Codes: https://github.com/taniyakapoor/PINNs_beam/tree/master
- ProRail. Key paper on the combined use of LDV and ABA under controlled/laboratory conditions, proven TRL4 level of the technology. Y. Zeng, A. Núñez, Z. Li, “Measuring transfer functions of tracks structures in a test rig with laser Doppler vibrometer and accelerometers on a moving vehicle.” Mechanical Systems and Signal Processing, Volume 214, May 2024, 111392: https://doi.org/10.1016/j.ymssp.2024.111392
- ProRail. Paper on fundamentals of AI (transfer learning and causal Physics informed NN) towards simulation of beams, T. Kapoor, H. Wang, A. Núñez and R. Dollevoet, “Transfer learning for improved generalizability in causal physics-informed neural networks for beam simulations”. Engineering Applications of Artificial Intelligence, Volume 133, Part A, July 2024, 108085: ‘Paper: https://doi.org/10.1016/j.engappai.2024.108085. Codes: https://github.com/taniyakapoor/Causal-PINN-for-beam/tree/second
- ProRail. Scientific article called “Enhanced Vertical Railway Track Quality Index with Dynamic Responses from Moving Trains”. Siwarak Unsiwilai, Wassamon Phusakulkajorn, Chen Shen, Arjen Zoeteman, Rolf Dollevoet, Alfredo Núñez, Zili Li. 15 October 2024, e38670. https://doi.org/10.1016/j.heliyon.2024.e38670; Enhanced vertical railway track quality index with dynamic responses from moving trains – ScienceDirect
- ProRail. Paper “Vertical dynamic measurements of a railway transition zone: a case study in Sweden”. Siwarak Unsiwilai, Chen Shen, Yuanchen Zeng, Li Wang, Alfredo Núñez & Zili Li. 21 February 2024. Vertical dynamic measurements of a railway transition zone: a case study in Sweden | Journal of Civil Structural Health Monitoring
- ProRail. Paper “Enhanced vertical railway track quality index with dynamic responses from moving trains”. Siwarak Unsiwilai ∙ Wassamon Phusakulkajorn ∙ Chen Shen ∙ Arjen Zoeteman ∙ Rolf Dollevoet ∙ Alfredo Núñez∙ Zili Li. October 15, 2024. Enhanced vertical railway track quality index with dynamic responses from moving trains: Heliyon
- ProRail. Paper “A Train-Borne Laser Vibrometer Solution Based on Multisignal Fusion for Self-Contained Railway Track Monitoring”. Yuanchen Zeng; Alfredo Núñez; Rolf Dollevoet; Arjen Zoeteman; Zili Li February 2025. A Train-Borne Laser Vibrometer Solution Based on Multisignal Fusion for Self-Contained Railway Track Monitoring | IEEE Journals & Magazine | IEEE Xplore
- ProRail. Paper “Neural Differential Equation-Based Two-Stage Approach for Generalization of Beam Dynamics”. Taniya Kapoor; Hongrui Wang; Anastasios Stamou; Kareem El Sayed; Alfredo Núñez; Daniel M. Tartakovsky. March 2025. Neural Differential Equation-Based Two-Stage Approach for Generalization of Beam Dynamics | IEEE Journals & Magazine | IEEE Xplore
- CEIT. Paper “A systematic review of acceleration-based estimation of railway track quality”. Adrián Sansiñena, Borja Rodríguez de Arana, Saioa Arrizabalaga. 26 Mar 2025. A systematic review of acceleration-based estimation of railway track quality: Vehicle System Dynamics: Vol 0, No 0
Disclaimer that applies to each and every one of the scientific articles published here:
“Funded by the European Union. Views and opinion expressed are however those of the author(s) only and do not necessarily reflect those of the European Union or Europe’s Rail Joint Undertaking. Neither the European Union nor the granting authority can be held responsible for them. The project FP3-IAM4Rail is supported by the Europe’s Rail Joint Undertaking and its members.”