4.6 Article

Prediction of Peak Particle Velocity Caused by Blasting through the Combinations of Boosted-CHAID and SVM Models with Various Kernels

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 8, 页码 -

出版社

MDPI
DOI: 10.3390/app11083705

关键词

ground vibration; blasting operation; boosting-CHAID; support vector machine; input selection

资金

  1. Science and Technology Research Program of Chongqing Municipal Education Commission [KJQN201804305, KJQN201904307]

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This research successfully demonstrates that a combination of boosting-CHAID and SVM models can accurately identify and predict the most effective parameters affecting PPV values, with the radial basis function kernel showing high capability in predicting PPV values.
This research examines the feasibility of hybridizing boosted Chi-Squared Automatic Interaction Detection (CHAID) with different kernels of support vector machine (SVM) techniques for the prediction of the peak particle velocity (PPV) induced by quarry blasting. To achieve this objective, a boosting-CHAID technique was applied to a big experimental database comprising six input variables. The technique identified four input parameters (distance from blast-face, stemming length, powder factor, and maximum charge per delay) as the most significant parameters affecting the prediction accuracy and utilized them to propose the SVM models with various kernels. The kernel types used in this study include radial basis function, polynomial, sigmoid, and linear. Several criteria, including mean absolute error (MAE), correlation coefficient (R), and gains, were calculated to evaluate the developed models' accuracy and applicability. In addition, a simple ranking system was used to evaluate the models' performance systematically. The performance of the R and MAE index of the radial basis function kernel of SVM in training and testing phases, respectively, confirm the high capability of this SVM kernel in predicting PPV values. This study successfully demonstrates that a combination of boosting-CHAID and SVM models can identify and predict with a high level of accuracy the most effective parameters affecting PPV values.

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