Application of Machine Learning in Bridge Inspection Technology
DOI:
https://doi.org/10.6919/ICJE.202507_11(7).0012Keywords:
Bridge Inspection; Machine Learning; Deep Learning; Artificial Intelligence.Abstract
The traditional bridge inspection technology mainly relies on visual inspection, which can meet the needs of bridge inspection to a certain extent, but with the development of science and technology and the increasing demand for bridge construction, the traditional inspection technology is also facing many challenges and limitations. Intelligent bridge inspection technology realizes comprehensive, efficient and accurate inspection and evaluation of bridge structural status by deeply integrating sensor technology, data analysis and artificial intelligence technology. It mainly introduces the existing bridge inspection technology, the application of machine learning in bridge inspection technology, and summarizes the advantages and prospects of combining bridge inspection technology with artificial intelligence.
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