Author/Authors :
Mikaeil, Reza Department of Mining and Engineering - Faculty of Environment - Urmia University of Technology, Urmia, Iran , Piri, Mostafa Department of Mining Engineering - Isfahan University of Technology (IUT), Isfahan, Iran , Shaffiee Haghshenas, Sina Department of Civil Engineering - University of Calabria, Rende, Italy , Careddu, Nicola Department of Civil - Environmental Engineering and Architecture (DICAAr) - University of Cagliari, Institute of Environmental Geology and Geoengineering, IGAG, CNR, Via Marengo, Cagliari, Italy , Hashemolhosseini, Hamid Department of Civil Engineering - Isfahan University of Technology (IUT), Isfahan, Iran
Abstract :
The noise of drilling in the dimension stone business is unbearable for both the
workplace and the people who work there. In order to reduce the negative effects
drilling has on the health of the environment, the drilling noise has to be measured,
assessed, and controlled. The main purpose of this work is to investigate an
experimental-intelligent method to predict the noise value of drilling in the dimension
stone industry. For this purpose, 135 laboratory tests are designed on five types of
rocks (four types of hard rock and one type of soft rock): and their results are measured
in the first step. In the second step, due to the unpredicted and uncertain issues in this
case, artificial intelligence (AI) approaches are applied, and the modeling is conducted
using three intelligent systems (IS): namely an adaptive neuro-fuzzy inference system-
SCM (ANFIS-SCM): an adaptive neuro-fuzzy inference system-FCM (ANFIS-FCM):
and the radial basis function network (RBF) neural network. 75% of the samples are
considered for training, and the rest for testing. Several models are constructed, and
the results indicate that although there is no significant difference between the models
according to the performance indices, the proposed construction of ANFIS-SCM can
be considered as an efficient tool in the evaluation of drilling noise. Finally, several
scenarios are designed with different input modes, and the results obtained prove that
the types of rock and the drill bits are more important than the operational
characteristics of the machine.
Keywords :
Drilling noise , Dimension stone , Intelligent systems , ANFIS-SCM , ANFIS-FCM