会议论文详细信息
12th International Conference on Damage Assessment of Structures
Data driven innovations in structural health monitoring
Rosales, M.J.^1 ; Liyanapathirana, R.^1
Western Sydney University, School of Computing, Engineering and Mathematics, Locked bag 1797, Penrith
NSW
2751, Australia^1
关键词: Civil infrastructures;    Damage assessments;    Data analytics;    Indispensable tools;    Response parameters;    Structural health;    Structural health monitoring (SHM);    Substantial investments;   
Others  :  https://iopscience.iop.org/article/10.1088/1742-6596/842/1/012012/pdf
DOI  :  10.1088/1742-6596/842/1/012012
来源: IOP
PDF
【 摘 要 】

At present, substantial investments are being allocated to civil infrastructures also considered as valuable assets at a national or global scale. Structural Health Monitoring (SHM) is an indispensable tool required to ensure the performance and safety of these structures based on measured response parameters. The research to date on damage assessment has tended to focus on the utilization of wireless sensor networks (WSN) as it proves to be the best alternative over the traditional visual inspections and tethered or wired counterparts. Over the last decade, the structural health and behaviour of innumerable infrastructure has been measured and evaluated owing to several successful ventures of implementing these sensor networks. Various monitoring systems have the capability to rapidly transmit, measure, and store large capacities of data. The amount of data collected from these networks have eventually been unmanageable which paved the way to other relevant issues such as data quality, relevance, re-use, and decision support. There is an increasing need to integrate new technologies in order to automate the evaluation processes as well as to enhance the objectivity of data assessment routines. This paper aims to identify feasible methodologies towards the application of time-series analysis techniques to judiciously exploit the vast amount of readily available as well as the upcoming data resources. It continues the momentum of a greater effort to collect and archive SHM approaches that will serve as data-driven innovations for the assessment of damage through efficient algorithms and data analytics.

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