Non-contact Intelligent Inspection of Infrastructure
项目名称: Non-contact Intelligent Inspection of Infrastructure
摘要: The objective of this research is to develop non-contact sensing mechanism for infrastructure monitoring as well as the associated machine-learning based technique for decision making. Currently available sensory systems for structural health monitoring are almost all based on transducers that are directly attached to or embedded in structures monitored. As a result, they face with critical barriers, such as extremely high implementation cost in very large scale structures and relatively high false alarm rate due to malfunction of sensors themselves. The non-contact nature of the proposed sensing modality will cause paradigm shift: it leads to mobile sensory system that can monitor very large scale structures employing only a small number of sensors, and it allows us to increase considerably the confidence level of structural health monitoring. In this research, concurrent breakthroughs in sensor synthesis and data analysis will be pursued. The project team will (a) develop a new non-contact impedance-based sensing mechanism via two-way magneto-mechanical dynamic interaction that is enhanced by adaptive electrical circuitry integration, which facilitates the tunable high-frequency interrogation to disclose structural anomaly; and (b) formulate accurate and robust decision making strategies that that take full advantage of the new machine learning techniques. Potential applications are large-scale infrastructure components such as railway tracks.
状态: Active
资金: 156846
资助组织: Transportation Infrastructure Durability Center<==>Office of the Assistant Secretary for Research and Technology<==>University of Connecticut, Storrs
项目负责人: Dunn, Denise E
执行机构: Transportation Infrastructure Durability Center<==>University of Connecticut, Storrs
开始时间: 20210801
预计完成日期: 20230731
主题领域: Data and Information Technology;Maintenance and Preservation;Safety and Human Factors;Terminals and Facilities;Transportation (General)
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