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首页> 外文期刊>Bulletin of engineering geology and the environment >Development of a new model for predicting flyrock distance in quarry blasting: a genetic programming technique
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Development of a new model for predicting flyrock distance in quarry blasting: a genetic programming technique

机译:采石场爆破中飞石距离预测新模型的开发:遗传编程技术

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This research was aimed at developing a new model to predict flyrock distance based on a genetic programming (GP) technique. For this purpose, six granite quarry mines in the Johor area of Malaysia were investigated, for which various controllable blasting parameters were recorded. A total of 262 datasets consisting of six variables (i.e., powder factor, stemming length, burden-to-spacing ratio, blast-hole diameter, maximum charge per delay, and blast-hole depth) were collected applied to developing the flyrock predictive model. To identify the optimum model, several GP models were developed to predict flyrock. In the same way, using non-linear multiple regression (NLMR) analysis, various models were established to predict flyrock. Finally, to compare the performance of the developed models, regression coefficient (R-2), root mean square error (RMSE), variance account for (VAF), and simple ranking methods were computed. According to the results obtained from the test dataset, the best flyrock predictive model was found to be the GP based model, with R-2 = 0.908, RMSE = 17.638 and VAF = 89.917, while the corresponding values for R-2,R- RMSE and VAF for the NLMR model were 0.816, 26.194, and 81.041, respectively.
机译:这项研究旨在开发一种基于遗传编程(GP)技术预测飞石距离的新模型。为此,对马来西亚柔佛州的六个花岗岩采石场进行了调查,记录了各种可控的爆破参数。收集了由六个变量(即,粉粒因子,茎长,负担-间距比,爆破孔直径,每次延迟的最大装药量和爆破孔深度)组成的262个数据集,用于开发飞石预测模型。为了确定最佳模型,开发了几种GP模型来预测飞石。同样,使用非线性多元回归(NLMR)分析,建立了各种模型来预测飞石。最后,为了比较开发模型的性能,计算了回归系数(R-2),均方根误差(RMSE),方差占比(VAF)和简单的排名方法。根据从测试数据集中获得的结果,发现最佳的飞石预测模型是基于GP的模型,R-2 = 0.908,RMSE = 17.638和VAF = 89.917,而R-2,R- NLMR模型的RMSE和VAF分别为0.816、26.194和81.041。

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