Assessing Ground Vibration Caused by Rock Blasting in Surface Mines Using Machine-Learning Approaches: A Comparison of CART, SVR and MARS
Loading...
Date
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Ground vibration induced by rock blasting is an unavoidable effect that may generate severe
damages to structures and living communities. Peak particle velocity (PPV) is the key predictor for
ground vibration. This study aims to develop a model to predict PPV in opencast mines. Two machinelearning
techniques, including multivariate adaptive regression splines (MARS) and classification
and regression tree (CART), which are easy to implement by field engineers, were investigated. The
models were developed using a record of 1001 real blast-induced ground vibrations, with ten (10)
corresponding blasting parameters from 34 opencast mines/quarries from India and Benin. The
suitability of one technique over the other was tested by comparing the outcomes with the support
vector regression (SVR) algorithm, multiple linear regression, and different empirical predictors using
a Taylor diagram. The results showed that the MARS model outperformed other models in this study
with lower error (RMSE = 0.227) and R2 of 0.951, followed by SVR (R2 = 0.87), CART (R2 = 0.74) and
empirical predictors. Based on the large-scale cases and input variables involved, the developed
models should lead to better representative models of high generalization ability. The proposed
MARS model can easily be implemented by field engineers for the prediction of blasting vibration
with reasonable accuracy.
