Author/Authors :
Fattahi, Hadi Faculty of Earth Sciences Engineering - Arak University of Technology, Iran , Hasanipanah, Mahdi Department of Mining Engineering - University of Kashan, Iran , Zandy Ilghani, Nastaran Faculty of Earth Sciences Engineering - Arak University of Technology, Iran
Abstract :
The mechanical characteristics of rocks and rock masses are considered as the
determining factors in making plans in the mining and civil engineering projects.
Two factors that determine how rocks responds in varying stress conditions are Pwave
velocity (PWV) and its isotropic properties. Therefore, achieving a highaccurate
method to estimate PWV is a very important task. This work investigates the
use of different intelligent models such as multivariate adaptive regression splines
(MARS), classification and regression tree (CART), group method of data handling
(GMDH), and gene expression programming (GEP) for the prediction of PWV. The
proposed models are then evaluated using several error statistics, i.e. squared
correlation coefficient (R2) and root mean squared error (RMSE). The values of R2
obtained from the CART, MARS, GMDH, and GEP models are 0.983, 0.999, 0.995,
and 0.998, respectively. Furthermore, the CART, MARS, GMDH, and GEP models
predict PWV with the RMSE values of 0.037, 0.007, 0.023, and 0.020, respectively.
According to the aforementioned amounts, the models presented in this work predict
PWV with a good performance. Nevertheless, the results obtained reveal that the
MARS model yields a better prediction in comparison to the GEP, GMDH, and
CART models. Accordingly, MARS can be offered as an accurate model for
predicting the aims in other rock mechanics and geotechnical fields.
Keywords :
P-wave velocity , Artificial intelligence , Prediction models , Prediction models , Multivariate adaptive regression splines