Non-uniform Corrosion Mechanism and residual life forecast of marine engineering concrete reinforcement

Journal of Engineering Research - Tập 11 - Trang 100053 - 2023
Pengrui Zhu1, Mengmeng Liu2
1Tianjin Research Institute of Water Transport Engineering, M.O.T., National Engineering Laboratory for Port Hydrauilc Contruction Technology, 300456, China
2Tianjin University of Technology, Institute of Ocean Energy and Intelligent Construction, 300384, China

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