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Predicting the average size of blasted rocks in aggregate quarries using artificial neural networks
Authors:Dimitraki  Lamprini  Christaras  Basile  Marinos  Vassilis  Vlahavas  Ioannis  Arampelos  Nikolas
Affiliation:1.Department of Geology, Aristotle University of Thessaloniki, Thessaloniki, Greece
;2.Department of Informatics, Aristotle University of Thessaloniki, Thessaloniki, Greece
;3.Thessaloniki, Greece
;
Abstract:

The prediction of the average size of fragments in blasted rock piles produced after blasting in aggregate quarries is essential for decresing the cost of crushing and secondary breaking. There are several conventional and advanced processes to estimate the size of blasted rocks. Among these, the empirical prediction of the expected fragmentation in most cases is carried out by Kuznetsov’s equation (Sov Min Sci 9:144–148, 1973), modified by Lilly (1986) and Cunningham (1987). The present research focuses on the effect of the engineering geological factors and blasting process on the blasted fragments using a more powerful, advanced computational tool, an artificial neural network. In particular, the blast database consists of the blastability index of limestone on the pit face, the quantities of the explosives and of the blasted rock pile, assessing the interaction of these parameters on the blasted rocks. The data were collected from two aggregate quarries, Drymos and Tagarades, near Thessaloniki, in the Central Macedonia region of Greece. This approach indicates significant performance stability, providing the fragmentation size with high accuracy.

Keywords:
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