Approaches to the rapid seismic damage prediction of r/c buildings using artificial neural networks

Engineering Structures - Tập 165 - Trang 120-141 - 2018
Konstantinos Morfidis1, Konstantinos Kostinakis2
1Earthquake Planning and Protection Organization (EPPO-ITSAK), Terma Dasylliou, 55535 Thessaloniki, Greece
2Department of Civil Engineering, Aristotle University of Thessaloniki, Aristotle University campus, 54124, Thessaloniki, Greece

Tài liệu tham khảo

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