Title of article :
Improvement of Small-Scale Dolomite Blasting Productivity: Comparison of Existing Empirical Models with Image Analysis Software and Artificial Neural Network Models
Author/Authors :
Olamide Taiwo, Blessing Department of Mining Engineering - Federal University of Technology, Akure, Nigeria
Abstract :
Assessment of blast results is a significant approach for the improvement of
mining operations. The different procedures for investigating rock fragmentation
have their limitations, causing different variation prediction errors. Thus every
technique is site-explicit, and applicable for a few explicit purposes. This work
evaluates the existing empirical blast fragmentation model predictions in the case
study of small-scale dolomite quarries. An attempt is made to compare the prediction
accuracy of the modified Kuz-Ram model, Lawal 2021 model, and Kuznetsov-
Cunningham-Ouchterlony (KCO) model with the WipFrag© analysis result and
proposed artificial neural network (ANN) models. The prediction error analysis of
the current models and that of the new proposed ANN models is evaluated using the
three model assessment indices. The assessment indices uncover that the KCO model
when compared to the modified Kuz-Ram model has the least error for most blast
round percentage passing size predicted. However, the proposed artificial neural
network models show high prediction exactness in predicting blast fragment mean
size than the existing empirical models. Therefore, the proposed ANN models can be
used to improve the productivity of small-scale dolomite blasting operation results
for practical purposes.
Keywords :
Small scale mining , Blasting , Blast fragmentation models , Artificial neural network , Blast optimization
Journal title :
Journal of Mining and Environment