USING LATIN HYPERCUBE SAMPLING BASED ON THE ANN-HPSOGA MODEL FOR ESTIMATION OF THE CREATION PROBABILITY OF DAMAGED ZONE AROUND UNDERGROUND SPACES
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Hadi Fattahi | Saeed Shojaee | M. A. Ebrahimi Farsangi | H. Mansouri | S. Shojaee | H. Mansouri | M. E. Farsangi | H. Fattahi
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