2024 : 5 : 4
Hasel Amini khoshalan

Hasel Amini khoshalan

Academic rank: Assistant Professor
ORCID:
Education: PhD.
ScopusId: 1111111
Faculty: Faculty of Engineering
Address:
Phone: 08733660073

Research

Title
Predict ion of flyrock and backbreak in open pit blasting operation : a neuro-geneti c approach
Type
JournalPaper
Keywords
Flyrock Backbreak Neuro-gene tic approach Sungun copper mine
Year
2012
Journal Arabian Journal of Geosciences
DOI
Researchers Masoud Monjezi ، Hasel Amini khoshalan ، Ali Yazdian Varjani

Abstract

An ideally performed blasting operation enormously influences the mining overall cost. This aim can be achieved b y p roper prediction and attenuation of flyrock and backbreak. Poor performance o f t he empirical models has urged the application of new approaches. In this paper, an attempt has been made to develop a new neuro -genetic model for predicting flyrock and backbreak in Sungun copper mine, Iran. Recognition of the optimum model with this method as compared with the classic neural networks is faster and convenient. Genetic algorithm was utilized to optimize neural network parameters. Parameters such as number of neurons in hidden layer, learning rate, and moment um were considered in the model construction. The performance of the model was examined by statistical method in which absolutely higher efficiency of neuro-genetic modeling was proved. Sensitivity analysis showed that the most influential parameters on flyrock are stemming and powder factor, whereas for backbreak, stemming and charge per delay are the most effective parameters.