Smart City Gnosys

Smart city article details

Title Machine Learning And Structural Health Monitoring Overview With Emerging Technology And High-Dimensional Data Source Highlights
ID_Doc 35895
Authors Malekloo A.; Ozer E.; AlHamaydeh M.; Girolami M.
Year 2022
Published Structural Health Monitoring, 21, 4
DOI http://dx.doi.org/10.1177/14759217211036880
Abstract Conventional damage detection techniques are gradually being replaced by state-of-the-art smart monitoring and decision-making solutions. Near real-time and online damage assessment in structural health monitoring (SHM) systems is a promising transition toward bridging the gaps between the past’s applicative inefficiencies and the emerging technologies of the future. In the age of the smart city, Internet of Things (IoT), and big data analytics, the complex nature of data-driven civil infrastructures monitoring frameworks has not been fully matured. Machine learning (ML) algorithms are thus providing the necessary tools to augment the capabilities of SHM systems and provide intelligent solutions for the challenges of the past. This article aims to clarify and review the ML frontiers involved in modern SHM systems. A detailed analysis of the ML pipelines is provided, and the in-demand methods and algorithms are summarized in augmentative tables and figures. Connecting the ubiquitous sensing and big data processing of critical information in infrastructures through the IoT paradigm is the future of SHM systems. In line with these digital advancements, considering the next-generation SHM and ML combinations, recent breakthroughs in (1) mobile device-assisted, (2) unmanned aerial vehicles, (3) virtual/augmented reality, and (4) digital twins are discussed at length. Finally, the current and future challenges and open research issues in SHM-ML conjunction are examined. The roadmap of utilizing emerging technologies within ML-engaged SHM is still in its infancy; thus, the article offers an outlook on the future of monitoring systems in assessing civil infrastructure integrity. © The Author(s) 2021.
Author Keywords big data; emerging technologies; internet of things; machine learning; Structural health monitoring


Similar Articles


Id Similarity Authors Title Published
31552 View0.934Abedi M.; Shayanfar J.; Al-Jabri K.Infrastructure Damage Assessment Via Machine Learning Approaches: A Systematic ReviewAsian Journal of Civil Engineering, 24, 8 (2023)
8103 View0.922Tahat A.; Al-Zaben A.; El-Deen L.S.; Abbad S.; Talhi C.An Evaluation Of Machine Learning Algorithms In An Experimental Structural Health Monitoring System Incorporating Lora Iot ConnectivityConference Record - IEEE Instrumentation and Measurement Technology Conference (2022)
44540 View0.92Sharma V.B.; Tewari S.; Biswas S.; Lohani B.; Dwivedi U.D.; Dwivedi D.; Sharma A.; Jung J.P.Recent Advancements In Ai-Enabled Smart Electronics Packaging For Structural Health MonitoringMetals, 11, 10 (2021)
10427 View0.92Zinno R.; Haghshenas S.S.; Guido G.; Vitale A.Artificial Intelligence And Structural Health Monitoring Of Bridges: A Review Of The State-Of-The-ArtIEEE Access, 10 (2022)
10086 View0.888Mondal T.G.; Jahanshahi M.R.Applications Of Computer Vision-Based Structural Health Monitoring And Condition Assessment In Future Smart CitiesThe Rise of Smart Cities: Advanced Structural Sensing and Monitoring Systems (2022)
2411 View0.888Marino R.; Marino A.; De Domenico D.; Carnevale L.; Gambito M.A.; Villari M.A Low Cost Platform For Distributed Data-Driven Structural Health MonitoringProceedings - IEEE Symposium on Computers and Communications (2024)
56915 View0.886Zinno R.; Haghshenas S.S.; Guido G.; Rashvand K.; Vitale A.; Sarhadi A.The State Of The Art Of Artificial Intelligence Approaches And New Technologies In Structural Health Monitoring Of BridgesApplied Sciences (Switzerland), 13, 1 (2023)
34988 View0.885Aktan E.; Bartoli I.; Glišić B.; Rainieri C.Lessons From Bridge Structural Health Monitoring (Shm) And Their Implications For The Development Of Cyber-Physical SystemsInfrastructures, 9, 2 (2024)
17889 View0.885Tang H.; Xie Y.; Ran L.Deep Learning For Vibration-Based Data-Driven Defect Diagnosis Of Structural SystemsThe Rise of Smart Cities: Advanced Structural Sensing and Monitoring Systems (2022)
40288 View0.882Golovastikov N.V.; Kazanskiy N.L.; Khonina S.N.Optical Fiber-Based Structural Health Monitoring: Advancements, Applications, And Integration With Artificial Intelligence For Civil And Urban InfrastructurePhotonics, 12, 6 (2025)