Prediction of Blast‑Induced Ground Vibration Using Principal Component Analysis–Based Classification and Logarithmic Regression Technique

- Organization:
- Society for Mining, Metallurgy & Exploration
- Pages:
- 10
- File Size:
- 1372 KB
- Publication Date:
- Jul 30, 2022
Abstract
Ground vibration is one of the major hazards produced by rock-blasting operation. The accurate prediction of vibration
is necessary for designing controlled blasting parameters. The existing vibration predictors consider maximum explosive
charge weight per delay and distance as the parameters responsible for ground vibration. These predictors are based on the
assumption that the geometrical parameters of the blast will be constant for a site. However, the mining sites with bigger
production targets have varying geometrical parameters to suit the excavator utility. Accordingly, the other blast design
parameters will also have an impact on ground vibration intensity. A principal component analysis is a dimension reduction
technique. This technique along with multivariate logarithmic regression has been used in this paper to predict the ground
vibration. The technique has classified the blast design parameters into four principal components. The regression with the
scores from these principal components has been carried out. The evaluation of the model performance of predictors along
with the existing empirical predictors has been carried out using R2 and RMSE values. The evaluation suggests that the
predictor with logarithmic regression followed by principal component analysis gives better performance with respect to
the existing empirical predictors.
Citation
APA:
(2022) Prediction of Blast‑Induced Ground Vibration Using Principal Component Analysis–Based Classification and Logarithmic Regression TechniqueMLA: Prediction of Blast‑Induced Ground Vibration Using Principal Component Analysis–Based Classification and Logarithmic Regression Technique. Society for Mining, Metallurgy & Exploration, 2022.