The implementation of machine learning for the real-time prediction of the suitable value of the damping ratio of a semi-active tuned mass damper (SA-TMD) is investigated to ensure enhanced vibration control in vehicle–bridge interaction (VBI) problems. The response assessment of the uncontrolled, tuned mass damper (TMD)-controlled, and SA-TMD-controlled bridge models is performed under the Japanese Shinkansen (SKS) train model. The energy-based predictive (EBP) control algorithm is implemented for the bridge fitted with the SA-TMD. The EBP algorithm-controlled SA-TMD results in more effective suppression of the bridge vibration as compared to the passive TMD. However, the effectiveness of the EBP algorithm reduces for more complex VBI systems because of the increased computational time delay. To circumvent the effect of the delay, a control strategy is proposed based on the weighted random forest (WRF) algorithm. The WRF algorithm is trained based on the data obtained from the EBP algorithm-controlled bridge and implemented to suppress the vehicle-induced vibration of the bridge using SA-TMD. The results demonstrate that the implementation of the newly proposed WRF algorithm-based control strategy nullifies the effects of the computational time delay. Furthermore, it is established that the WRF algorithm suppresses the bridge vibration more effectively than the EBP algorithm.
Article navigation
April 2025
Research Article|
January 17 2023
Machine learning driven damper for response control in vehicle–bridge interaction systems Available to Purchase
Kumar Rajnish, BTech, MTech
;
Kumar Rajnish, BTech, MTech
Postgraduate student, Multi-Hazard Protective Structures (MHPS) Laboratory, Department of Civil Engineering, Indian Institute of Technology (IIT) Delhi, Hauz Khas, New Delhi, India
Search for other works by this author on:
Anoop Kodakkal, BTech, MTech
;
Anoop Kodakkal, BTech, MTech
Doctoral candidate, Chair of Structural Analysis, TUM School of Engineering and Design, Technical University of Munich (TUM), Munich, Germany
Search for other works by this author on:
Daniel H. Zelleke, BSc, MTech
;
Daniel H. Zelleke, BSc, MTech
Doctoral candidate, Multi-Hazard Protective Structures (MHPS) Laboratory, Department of Civil Engineering, Indian Institute of Technology (IIT) Delhi, Hauz Khas, New Delhi, India
Search for other works by this author on:
Rishith E. Meethal, BTech, MSc
;
Rishith E. Meethal, BTech, MSc
Doctoral candidate, Chair of Structural Analysis, TUM School of Engineering and Design, Technical University of Munich (TUM), Munich, Germany
Search for other works by this author on:
Vasant A. Matsagar, BE, ME, PhD
;
Vasant A. Matsagar, BE, ME, PhD
Dogra Chair Professor, Multi-Hazard Protective Structures (MHPS) Laboratory, Department of Civil Engineering, Indian Institute of Technology (IIT) Delhi, Hauz Khas, New Delhi, India (corresponding author: matsagar@civil.iitd.ac.in)
Search for other works by this author on:
Kai-Uwe Bletzinger, Dr-Ing
;
Kai-Uwe Bletzinger, Dr-Ing
Professor, Chair of Structural Analysis, TUM School of Engineering and Design, Technical University of Munich (TUM), Munich, Germany
Search for other works by this author on:
Roland Wüchner, Dr-Ing
Roland Wüchner, Dr-Ing
Professor, Institute of Structural Analysis, Technische Universität Braunschweig, Braunschweig, Germany
Search for other works by this author on:
Publisher: Emerald Publishing
Received:
November 25 2021
Accepted:
January 11 2023
Online ISSN: 1751-7664
Print ISSN: 1478-4637
Emerald Publishing Limited: All rights reserved
2025
Proceedings of the Institution of Civil Engineers - Bridge Engineering (2025) 178 (2): 109–131.
Article history
Received:
November 25 2021
Accepted:
January 11 2023
Citation
Rajnish K, Kodakkal A, Zelleke DH, Meethal RE, Matsagar VA, Bletzinger K, Wüchner R (2025), "Machine learning driven damper for response control in vehicle–bridge interaction systems". Proceedings of the Institution of Civil Engineers - Bridge Engineering, Vol. 178 No. 2 pp. 109–131, doi: https://doi.org/10.1680/jbren.21.00090
Download citation file:
Suggested Reading
Novel application of machine learning for estimation of pullout coefficient of geogrid
Geosynthetics International (March,2022)
Corporate financial distress prediction: a machine learning approach in the era of big data
Journal of Accounting & Organizational Change (December,2025)
A comparison between geomembrane-sand tests and machine learning predictions
Geosynthetics International (May,2024)
Exploring the potential of machine learning to reduce administrative burden in participatory budgeting: a case study of Seoul
Journal of Public Budgeting, Accounting & Financial Management (September,2025)
Comparison of machine learning predictions of subjective poverty in rural China
China Agricultural Economic Review (September,2022)
Related Chapters
Garbage in, Garbage out: A Theory-Driven Approach to Improve Data Handling in Supervised Machine Learning
Methods to Improve Our Field
Constructive Effect of Ranking Optimal Features Using Random Forest, SupportVector Machine and Naïve Bayes forBreast Cancer Diagnosis
Big Data Analytics and Intelligence: A Perspective for Health Care
Detecting Non-injured Passengers and Drivers in Car Accidents: A New Under-resampling Method for Imbalanced Classification
Advances in Business and Management Forecasting
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
