Evaluation of blast-induced ground vibrations in open-pit mines by using adaptive neuro-fuzzy inference systems |
| |
Authors: | Arzu Koçaslan A. Gürkan Yüksek Kazım Görgülü Ercan Arpaz |
| |
Affiliation: | 1.Geophysical Engineering Department,Cumhuriyet University,Sivas,Turkey;2.Computer Engineering Department,Cumhuriyet University,Sivas,Turkey;3.Mining Engineering Department,Cumhuriyet University,Sivas,Turkey;4.Kocaeli Vocational School,Kocaeli University,Izmit,Turkey |
| |
Abstract: | This study addresses the effects of rock characteristics and blasting design parameters on blast-induced vibrations in the Kangal open-pit coal mine, the Tülü open-pit boron mine, the K?rka open-pit boron mine, and the TKI Çan coal mine fields. Distance (m, R) and maximum charge per delay (kg, W), stemming (m, SB), burden (m, B), and S-wave velocities (m/s, Vs) obtained from in situ field measurements have been chosen as input parameters for the adaptive neuro-fuzzy inference system (ANFIS)-based model in order to predict the peak particle velocity values. In the ANFIS model, 521 blasting data sets obtained from four fields have been used (r 2 = 0.57–0.81). The coefficient of ANFIS model is higher than those of the empirical equation (r 2 = 1). These results show that the ANFIS model to predict PPV values has a considerable advantage when compared with the other prediction models. |
| |
Keywords: | |
本文献已被 SpringerLink 等数据库收录! |
|