Performance evaluation of chain saw machines for dimensional stones using feasibility of neural network models
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Mohammad Ataei | Reza Kakaie | Reza Mikaeil | Javad Mohammadi | Sina Shaffiee Haghshenas | M. Ataei | R. Mikaeil | R. Kakaie | J. Mohammadi
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