Predicting the compressive strength of unreinforced brick masonry using machine learning techniques validated on a case study of a museum through nondestructive testing

Journal of Civil Structural Health Monitoring - Tập 10 Số 3 - Trang 389-403 - 2020
Mayank Mishra1, Amanjeet Singh Bhatia2, Damodar Maity2
1School of Infrastructure, Indian Institute of Technology, IIT Bhubaneswar, Khordha, India
2Department of Civil Engineering, Indian Institute of Technology, Kharagpur, India

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