Prediction of ground vibrations induced by bench blasting using the random forest algorithm

IF 0.9 4区 材料科学 Q3 Materials Science Journal of The South African Institute of Mining and Metallurgy Pub Date : 2023-04-14 DOI:10.17159/2411-9717/936/2023
N. Dzimunya, B. Besa, R. Nyirenda
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Abstract

The accurate estimation of peak particle velocity (PPV) is crucial during the design of bench blasting operations in open pit mines, since the vibrations caused by blasting can significantly affect the integrity of nearby buildings and other structures. Conventional models used to predict blast-induced vibrations are not capable of capturing nonlinear relationships between the different blasting-related parameters. Soft computing techniques, i.e., techniques that are founded on the principles of artificial intelligence, effectively model these complexities. In this paper, we use the random forest (RF) algorithm to develop a model to predict blast-induced ground vibrations from bench blasting using 48 data records. The model was trained and tested using WEKA data-mining software. To build this model, a feature selection process using several combinations of Attribute Evaluators and Search Methods under the WEKA Select Attributes tab was performed. The correlation coefficient of the actual data and RF model-predicted data was 0.95, and the weighted average of the relative absolute error (RAE) was 10.9%. The RF model performance was also compared to the equivalent-path-based (EPB) equation on the testing data-set, and it was seen that the RF model can effectively be used to predict PPV. The study also demonstrates that the EPB equation is a suitable empirical method for predicting PPV.
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用随机森林算法预测台阶爆破引起的地面振动
在露天矿台阶爆破作业的设计过程中,准确估计峰值颗粒速度(PPV)至关重要,因为爆破引起的振动会严重影响附近建筑物和其他结构的完整性。用于预测爆破引起的振动的传统模型不能捕捉不同爆破相关参数之间的非线性关系。软计算技术,即建立在人工智能原理基础上的技术,有效地模拟了这些复杂性。在本文中,我们使用随机森林(RF)算法,利用48个数据记录,建立了一个预测台阶爆破引起的地面振动的模型。使用WEKA数据挖掘软件对模型进行了训练和测试。为了构建该模型,在WEKA“选择属性”选项卡下使用属性计算器和搜索方法的几种组合进行了特征选择过程。实际数据与RF模型预测数据的相关系数为0.95,相对绝对误差的加权平均值(RAE)为10.9%。在测试数据集上,将RF模型的性能与基于等效路径的方程进行了比较,表明RF模型可以有效地用于预测PPV。研究还表明,EPB方程是预测PPV的一种合适的经验方法。
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来源期刊
CiteScore
1.50
自引率
11.10%
发文量
61
审稿时长
4-8 weeks
期刊介绍: The Journal serves as a medium for the publication of high quality scientific papers. This requires that the papers that are submitted for publication are properly and fairly refereed and edited. This process will maintain the high quality of the presentation of the paper and ensure that the technical content is in line with the accepted norms of scientific integrity.
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