A multi‐level approach to predict the seismic response of rigid rocking structures using artificial neural networks
Seyed Amir Banimahd(Ardakan University), Paulo B. Lourénço, Shaghayegh Karımzadeh(Institute for Sustainability), Anastasios I. Giouvanidis(University of Auckland)
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