4.6 Article

Machine learning applied to the design and inspection of reinforced concrete bridges: Resilient methods and emerging applications

Journal

STRUCTURES
Volume 33, Issue -, Pages 3954-3963

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.istruc.2021.06.110

Keywords

Machine learning; Deep learning; Reinforced concrete bridges; Strength prediction; Structural health monitoring

Funding

  1. National Natural Science Foundation of China [51978150, 52050410334]
  2. Southeast University Zhongying Young Scholars project
  3. Fundamental Research Funds for the Central Universities
  4. Alexander von Humboldt-Foundation

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Machine learning is a key pillar of Industry 4.0, enabling rapid technological advancement by establishing complex connections among engineering data. Its applications in various engineering branches are rapidly evolving, with new research directions being established in bridge engineering.
Machine learning is one of the key pillars of industry 4.0 that has enabled rapid technological advancement through establishing complex connections among heterogeneous and highly complex engineering data automatically. Once the machine learning model is trained appropriately, it becomes able to effectively predict and make decisions. The technology is rapidly evolving and has found numerous applications in various branches of engineering due to its preponderance. This study is focused on exploring the recent advances of machine learning and its applications in reinforced concrete bridges. It covers a range of different machine learning techniques exploited in structural design, construction quality management, bridge engineering, and the inspection of reinforced concrete bridges. This review demonstrated that machine learning algorithms have established new research directions in bridge engineering, in particular for applications such as the form-finding of innovative long-span structures, structural reinforcement, and structural optimization.

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