Prediction of speed limit of cars moving on corroded steel girder bridges using artificial neural networks

Sādhanā - Tập 47 Số 3 - 2022
Ngoc-Long Tran1, Duy-Duan Nguyen2, Trong-Ha Nguyen2
2Department of Civil Engineering, Vinh University, Vinh, Vietnam

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Tài liệu tham khảo

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