Predicting the corrosion initiation time of fresh concrete sewers by artificial neural network
نویسندگان
چکیده
Predicting the corrosion initiation time of fresh concrete sewers by artificial neural network Guangming Jiang*, Zhiguo Yuan*, Philips Bond*, Jurg Keller* * Advanced Water Management Centre, QLD 4067, The University of Queensland, Australia
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