煤炭工程 ›› 2022, Vol. 54 ›› Issue (4): 92-98.doi: 10.11799/ce202204017

• 研究探讨 • 上一篇    下一篇

岩石巷道爆破效果预测及应用效果实践研究

马鑫民1,王毅1,翟中华1,冯文宇1,朱培枭1,陈攀1,张召冉2,王雁冰1   

  1. 1. 中国矿业大学(北京)
    2. 北方工业大学
  • 收稿日期:2021-10-10 修回日期:2021-12-22 出版日期:2022-04-15 发布日期:2022-07-06
  • 通讯作者: 马鑫民 E-mail:mxm@cumtb.edu.cn

Research on Forecast and Application of Rock Roadway Blasting Effect Based on Grid Search CV-SVM

  • Received:2021-10-10 Revised:2021-12-22 Online:2022-04-15 Published:2022-07-06

摘要: 为更准确地预测岩石巷道的爆破效果,以提高爆破效率和降低生产成本,基于随机森林方法确定了影响爆破效果的6个关键因素:总装药量、断面面积、炮眼深度、掏槽眼装药量、辅助眼装药量、周边眼装药量,构建基于网格搜索法-支持向量机回归预测模型,以平均绝对误差和相关系数为评价指标,预测炸药单耗。建立了径向基核函数、多项式核函数和线性核函数三种核函数的支持向量机模型,并采用随机森林回归算法作为对照组。结果表明,SVR-Rbf组表现最好,在数据库和顾北煤矿实际案例的预测中相关系数均达到0.95左右,平均绝对误差也至少比其他组小一倍左右,并将最优模型应用于顾北矿岩石巷道爆破炸药单耗预测,效果良好,表明建立的Grid Search CV-SVM预测模型是预测岩石巷道爆破效果有效方法。

关键词: 岩石巷道, 支持向量机, 网格搜索法, 随机森林, 爆破效果, 炸药单耗

Abstract: Abstract: To predict the blasting effect of rock roadway more accurately, to improve blasting efficiency and reduce production costs, the blasting data in the existing rock blasting database is used. Select 6 factors of total charge, roadway cross-sectional area, blast hole depth, cut eye charge, auxiliary eye charge, and peripheral eye charge as input, and construct a grid search Cross Validation-Support Vector Machine (Grid Search CV-SVM) regression prediction model. Use average absolute error and correlation coefficient as evaluation indicators to predict the unit consumption of explosives. SVM uses radial basis kernel function (Rbf), polynomial kernel function (Poly), and linear kernel function (Linear) to compare three kernel functions with each other, and introduces Random Forest (Random Forest) regression algorithm as the control group. The results show that the SVR-Rbf group performed the best. The correlation coefficients in the database and the actual case prediction of the Gubei coal mine were both about 0.95, and the average absolute error was at least about twice as small as the other groups. The performance of the Random Forest prediction group is not as good as the three SVM prediction groups,and the optimal model is applied to the prediction of the unit consumption of explosives for rock tunnel blasting in Gubei Mine, and the effect is good. The established Grid Search CV-SVM prediction model is an excellent method to predict the effect of rock roadway blasting.

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