Synergizing machine learning and experimental analysis to predict post‐heating compressive strength in waste concrete
Alaa Mahmoud(October High Institute For Enginnering and Technology), Panagiotis G. Asteris(School of Pedagogical and Technological Education), Ayman M. Aboraya(Higher Institute of Engineering), Ali Sadollah(University of Science and Culture), Alaa A. El‐Sayed(Fayoum University), Bassam A. Tayeh(Islamic University of Gaza), Islam N. Fathy(Higher Institute of Engineering), Nikos Zygouris(School of Pedagogical and Technological Education), Ibrahim Saad Agwa(Suez University)
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