Prediction and optimization of back-break and rock fragmentation using an artificial neural network and a bee colony algorithm

Author:

Ebrahimi Ebrahim,Monjezi Masoud,Khalesi Mohammad Reza,Armaghani Danial Jahed

Publisher

Springer Science and Business Media LLC

Subject

Geology,Geotechnical Engineering and Engineering Geology

Reference39 articles.

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2. Bagheri M, Khoshru H (2012) A new model for design of blasting pattern based on modified Kuz-Ram model in Gole- Gohar mine, Iran. In 1st technology conference of mining, Iran

3. Bahrami A, Monjezi M, Goshtasbi K, Ghazvinian A (2011) Prediction of rock fragmentation due to blasting using artificial neural network. Eng Comput 27(2):177–181

4. Bozorg Haddad O (2005) Hydro system optimization using bee colony algorithm, Ph.D thesis, university of science and technology, Iran

5. Cunningham CVB (1983) The Kuz-Ram model for prediction of fragmentation from blasting. In: Proceedings of the first international symposium on rock fragmentation by blasting, Lulea, Sweden, pp 439–453

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