Title of article :
Developing New Models for Flyrock Distance Assessment in Open-Pit Mines
Author/Authors :
Shakeri, Jamshid Department of Mining Engineering - Faculty of Engineering - University of Kurdistan, Sanandaj, Iran , Amini Khoshalan, Hasel Department of Mining Engineering - Faculty of Engineering - University of Kurdistan, Sanandaj, Iran , Dehghani, Hesam Department of Mining Engineering - Hamedan University of Technology, Hamedan, Iran , Bascompta, Marc Department of Mining Engineering - Polytechnic University of Catalonia, Barcelona, Spain , Kennedy, Onyelowe Department of Civil Engineering - Michael Okpara University of Agriculture, Umudike, Nigeria
Abstract :
In this research work, a comprehensive study is conducted to predict flyrock as a
typical and undesirable phenomenon occurring during the blasting operation in open-
pit mining. Despite the availability of several empirical methods for predicting the
flyrock distance, the complexity of flyrock analysis has resulted in the low
performance of these models. Therefore, the statistical and robust artificial intelligence
techniques are applied for flyrock prediction in the Sungun copper mine in Iran. For
this purpose, the linear multivariate regression (LMR), imperialist competitive
algorithm (ICA), adaptive neuro-fuzzy inference system (ANFIS), and artificial neural
network (ANN) methods are applied to predict flyrock with effective parameters
including the blasthole diameter, stemming, burden, powder factor, and maximum
charge per delay. According to the attained results, the ANN model with the structure
of 5-8-1, Levenberg-Marquardt as the learning algorithm, and log-sigmoid (logsig) as
the transfer functions are selected as the optimal network with the RMSE and R2
values of 5.04 m and 95.6% to predict flyrock, respectively. Also it can be concluded
that the ICA technique has a relatively high capability in predicting flyrock, with the
LMR and ANFIS models placed in the next. Finally, the sensitivity analysis reveal that
the powder factor and blasthole diameters have the most importance on the flyrock
distance in the present work.
Keywords :
Flyrock distance , Linear multivariate regression , Imperialist competitive algorithm , Adaptive neuro-fuzzy inference system , Artificial neural network
Journal title :
Journal of Mining and Environment