Predicting blast-induced ground vibrations in some Indian tunnels using decision tree

Society for Mining, Metallurgy & Exploration
Aditya Rana N. K. Bhagat G. P. JADAUN SAURAV RUKHAIYAR ANINDYA PAIN
Organization:
Society for Mining, Metallurgy & Exploration
Pages:
2
File Size:
489 KB
Publication Date:

Abstract

This study compares three different techniques — decision tree, artificial neural network (ANN) and multivariate regression analysis (MVRA) — for predicting blast-induced ground vibrations in some Indian tunneling projects. The models’ performance was also compared with site-specific conventional predictor equations. A database consisting of 137 vibration records was randomly divided into training and testing sets for model generation. The results indicate that the decision tree is best suited to predicting vibrations. Furthermore, the decision tree suggests that the intensity of near-field ground vibrations is mainly affected by the total charge fired in a round, whereas the intensity of far-field vibrations is governed by maximum charge per delay and charge per hole.
Citation

APA: Aditya Rana N. K. Bhagat G. P. JADAUN SAURAV RUKHAIYAR ANINDYA PAIN  Predicting blast-induced ground vibrations in some Indian tunnels using decision tree

MLA: Aditya Rana N. K. Bhagat G. P. JADAUN SAURAV RUKHAIYAR ANINDYA PAIN Predicting blast-induced ground vibrations in some Indian tunnels using decision tree. Society for Mining, Metallurgy & Exploration,

Export
Purchase this Article for $25.00

Create a Guest account to purchase this file
- or -
Log in to your existing Guest account