Application of a Hybrid Artificial Neural Network-Particle Swarm Optimization (ANN-PSO) Model in Behavior Prediction of Channel Shear Connectors Embedded in Normal and High-Strength Concrete
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Xuan Song | Yousef Zandi | Mahdi Shariati | Peyman Mehrabi | Alireza Bahadori | Hoang Nguyen | Musab N. A. Salih | Shek Poi-Ngian | Jie Dou | Mohammad Saeed Mafipour | Musab N. A. Salih | A. Bahadori | M. Shariati | Hoang Nguyen | Y. Zandi | M. S. Mafipour | Peyman Mehrabi | Shek Poi-Ngian | Xuang Song | J. Dou
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