Shivank Mittal | Structural Health Monitoring | Best Researcher Award

Mr. Shivank Mittal | Structural Health Monitoring | Best Researcher Award

Ph.D. candidate, Western University, Canada

Shivank Mittal is a Ph.D. candidate in Structural Engineering at the University of Western Ontario, specializing in non-contact structural health monitoring using vision-based methodologies. With a Master of Technology in Civil Engineering from IIT Guwahati and a Bachelor of Technology from Jamia Millia Islamia, he has demonstrated academic excellence and a strong foundation in civil engineering principles. His research focuses on leveraging high-speed camera systems and advanced signal processing techniques for real-time assessment of structural integrity, aiming to enhance sustainability and reduce monitoring costs. Beyond his research, Shivank has contributed to the field through industry experience at COWI India and active involvement in academic teaching and student governance. His work bridges the gap between theoretical research and practical application, positioning him as a promising contributor to the future of civil infrastructure monitoring.

Profile

Education

Ph.D. in Structural Engineering
University of Western Ontario, London, Canada
May 2022 – Present
Thesis Advisor: Dr. Ayan Sadhu

M.Tech. in Civil Engineering
Indian Institute of Technology Guwahati, Assam, India
June 2019 – July 2021
CPI: 9.29/10
Thesis Advisors: Dr. Arunasis ChakrabortyScienceDirect

B.Tech. in Civil Engineering
Jamia Millia Islamia, New Delhi, India
June 2012 – July 2016
CPI: 8.5/10

Shivank’s academic journey reflects a commitment to excellence and a deep understanding of civil engineering principles, providing a solid foundation for his innovative research in structural health monitoring.

Experience

Research Scholar
Smart Cities and Communities Laboratory, University of Western Ontario
May 2022 – Present
Advisor: Dr. Ayan Sadhu
Focused on developing vision-based methodologies using high-speed cameras for non-contact structural health monitoring.

Associate Bridge Engineer
COWI India, Gurugram
August 2021 – April 2022
Worked on the design of pile caps and pier caps for the Jurong Region Line in Singapore, employing Strut and Tie methods.

Research Scholar
Indian Institute of Technology Guwahati
June 2019 – July 2021
Developed SPoTMAn, a MATLAB-based GUI for signal processing in structural health monitoring.

Content Development Expert
IES Master Publication, New Delhi
December 2017 – August 2018
Developed study materials and question papers for competitive exams.

Summer Industrial Intern
Delhi Metro Rail Corporation, New Delhi
June 2015 – July 2015
Gained hands-on experience in construction and concrete mix design.

Shivank’s diverse experiences have equipped him with a unique blend of research acumen and practical engineering skills, enhancing his contributions to the field of structural health monitoring.

Research Focus

Shivank Mittal’s research centers on advancing vision-based structural health monitoring (SHM) methodologies. His work aims to develop cost-effective, non-contact techniques for real-time assessment of structural integrity. By utilizing high-speed camera systems, his research seeks to capture dynamic responses of structures, enabling the identification of potential issues without the need for direct sensor installation. This approach not only reduces maintenance costs but also enhances the safety and longevity of infrastructure. His innovative use of signal processing techniques, including wavelet transforms and non-parametric regression, further refines the accuracy and reliability of SHM systems. Through these advancements, Shivank contributes to the evolution of smart infrastructure monitoring, aligning with the growing emphasis on sustainability and efficiency in civil engineering practices.arXiv+8ResearchGate+8arXiv+8

Publication Top Notes

1. Towards Vision-Based Structural Modal Identification at Low Frame Rate Using Blind Source Separation**

Journal of Infrastructure Intelligence and Resilience, 2024
Co-authored with Ayan Sadhu
This paper presents a novel approach for structural modal identification using low-frame-rate video data, employing blind source separation techniques to enhance the accuracy of modal parameter extraction.ASCE Library+1ScienceDirect+1

2. Recent Advancements and Future Trends in Indirect Bridge Health Monitoring**

Practice Periodical on Structural Design and Construction, 2023
Co-authored with Premjeet Singh and Ayan Sadhu
The article reviews the latest developments in indirect methods for bridge health monitoring, discussing emerging technologies and methodologies in the field.

Conclusion

Shivank Mittal is highly deserving of consideration for the Best Researcher Award, particularly due to:

  • His research innovation in non-contact structural monitoring and signal processing.
  • His strong academic record and real-world engineering experience.
  • His consistent involvement in academia, leadership, and community engagement.

With stronger emphasis on peer-reviewed publications and impact metrics, he would not only be a nominee but a likely winner.

Shayan Ghazimoghadam | Structural Health Monitoring | Best Researcher Award

Mr. Shayan Ghazimoghadam | Structural Health Monitoring | Best Researcher Award

PhD Student, Islamic Azad University, Iran

Shayan Ghazimoghadam is a Ph.D. student in Structural Engineering at Islamic Azad University of Shahrood, Iran, specializing in data-driven structural health monitoring. His research integrates artificial intelligence with civil engineering to develop unsupervised deep learning methods for real-time damage detection in structures. Shayan’s work focuses on creating digital twins for infrastructure assessment, aiming to enhance predictive maintenance and safety. He has authored several publications, including a notable paper on vibration-based damage diagnosis using multi-head self-attention LSTM autoencoders, published in Measurement journal. Additionally, he has presented his research at national conferences and served as a keynote speaker, demonstrating his commitment to advancing the field of structural health monitoring.

Profile

Google Scholar​

Education

Shayan Ghazimoghadam completed his Bachelor of Science in Civil Engineering at Islamic Azad University of Gorgan, Iran, in 2018, where he excelled in design courses, achieving a GPA of 19/20 in Steel Structures and a perfect 20/20 in Concrete Structures. He then pursued a Master of Science in Structural Engineering at Lamei Gorgani Institute of Higher Education, Gorgan, graduating in 2022 with a GPA of 19.07/20. His master’s dissertation focused on structural damage identification under ambient vibration using an unsupervised deep learning method, supervised by Dr. Seyed Ali Asghar Hosseinzadeh. Currently, Shayan is a Ph.D. student at Islamic Azad University of Shahrood, Iran, where he continues to explore innovative approaches in structural health monitoring and artificial intelligence applications in civil engineering.

Experience 

Between 2022 and 2023, Shayan Ghazimoghadam served as a Research Assistant at Golestan University, Gorgan, Iran, under the guidance of Dr. Seyed Ali Asghar Hosseinzadeh. During this period, he conducted research on real-time structural health monitoring utilizing AI-powered techniques. His work involved developing and testing unsupervised deep learning algorithms for damage detection in structures based on vibration data. Shayan’s contributions led to the presentation of his findings at national conferences, showcasing his ability to communicate complex research outcomes effectively. This experience has significantly enhanced his expertise in integrating artificial intelligence with structural engineering, positioning him as a promising researcher in the field of structural health monitoring.

Awards and Honors 

Shayan Ghazimoghadam has been recognized for his academic excellence and research contributions. He ranked first among M.Sc. students in Structural Engineering at Lamei Gorgani Institute of Higher Education, Gorgan, Iran, in 2022, achieving a GPA of 19.07/20. His innovative research on structural damage identification using unsupervised deep learning methods has been published in reputable journals, including the Measurement journal, where his paper has garnered 26 citations as of 2024. Additionally, Shayan was invited as a keynote speaker at the 3rd National Conference on Civil Engineering, Intelligent Development, and Sustainable Systems in 2023, where he presented on AI-powered structural damage identification and localization through accelerometer data. These accolades underscore his commitment to advancing the field of structural health monitoring and his potential for future contributions to civil engineering research.

Research Focus

Shayan Ghazimoghadam’s research focuses on the integration of artificial intelligence with structural health monitoring (SHM) to develop innovative solutions for infrastructure maintenance. His primary interests include data-driven SHM, unsupervised structural damage identification, and the application of digital twins for condition assessment. Shayan aims to enhance the accuracy and efficiency of damage detection in structures by employing unsupervised deep learning techniques, particularly multi-head self-attention LSTM autoencoders. His work contributes to the development of digital twins, virtual representations of physical assets, to monitor and assess the condition of infrastructure in real time. By leveraging AI and machine learning, Shayan seeks to revolutionize traditional SHM practices, offering more proactive and predictive maintenance strategies that can lead to safer and more sustainable infrastructure systems.

Publication Top Notes​

📘 1. A Novel Unsupervised Deep Learning Approach for Vibration-Based Damage Diagnosis Using a Multi-Head Self-Attention LSTM Autoencoder

Authors: S. Ghazimoghadam, S.A.A. Hosseinzadeh
Journal: Measurement, Volume 229, Article 114410
Year: 2024
Citations (as of 2025): 26
DOI: Measurement 229, 114410 (sample link, please verify)

🔍 Summary:

This publication introduces a novel unsupervised deep learning method for real-time structural damage detection using only ambient vibration data. The approach combines Long Short-Term Memory (LSTM) autoencoders with multi-head self-attention mechanisms, enabling the system to effectively learn temporal features and focus on critical data patterns without the need for labeled damage data.

By leveraging unsupervised learning, the model is highly adaptable and scalable, making it suitable for practical deployment in real-world structural health monitoring (SHM) scenarios. The method was validated using benchmark datasets, showing superior performance in damage localization and diagnosis accuracy compared to traditional approaches.

📗 2. Transformer-Based Time-Series GAN for Data Augmentation in Bridge Monitoring Digital Twins

Authors: V. Mousavi, M. Rashidi, S. Ghazimoghadam, M. Mohammadi, B. Samali
Journal: Automation in Construction, Volume 175, Article 106208
Year: 2025 (Under Review)
DOI: Automation in Construction 175, 106208 (check for final link when published)

🔍 Summary:

This paper presents a Transformer-based Generative Adversarial Network (GAN) for augmenting time-series sensor data in bridge monitoring systems. The technique is particularly geared towards Digital Twin models, which require large, diverse, and high-quality datasets to simulate and predict structural behavior accurately.

The GAN architecture uses a Transformer encoder to better capture temporal dependencies in structural response data, generating realistic synthetic datasets for training SHM models. By augmenting scarce or incomplete datasets, this method improves predictive performance, anomaly detection, and damage assessment capabilities of digital twins used in civil infrastructure.