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Prediction of Backbreak in Open-Pit Blasting Operations Using the Machine Learning Method

机译:使用机器学习方法预测露天矿爆破作业中的反弹

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摘要

Backbreak is an undesirable phenomenon in blasting operations. It can cause instability of mine walls, falling down of machinery, improper fragmentation, reduced efficiency of drilling, etc. The existence of various effective parameters and their unknown relationships are the main reasons for inaccuracy of the empirical models. Presently, the application of new approaches such as artificial intelligence is highly recommended. In this paper, an attempt has been made to predict backbreak in blasting operations of Soungun iron mine, Iran, incorporating rock properties and blast design parameters using the support vector machine (SVM) method. To investigate the suitability of this approach, the predictions by SVM have been compared with multivariate regression analysis (MVRA). The coefficient of determination (CoD) and the mean absolute error (MAE) were taken as performance measures. It was found that the CoD between measured and predicted backbreak was 0.987 and 0.89 by SVM and MVRA, respectively, whereas the MAE was 0.29 and 1.07 by SVM and MVRA, respectively.
机译:爆破是爆破作业中不希望的现象。它可能导致矿井壁不稳定,机器跌落,破碎不当,钻井效率降低等。各种有效参数的存在及其未知的关系是经验模型不准确的主要原因。当前,强烈建议应用诸如人工智能之类的新方法。本文尝试通过支持向量机(SVM)方法结合岩石性质和爆破设计参数,来预测伊朗Soungun铁矿的爆破作业中的回弹。为了研究这种方法的适用性,将SVM的预测与多元回归分析(MVRA)进行了比较。测定系数(CoD)和平均绝对误差(MAE)被用作性能指标。发现通过SVM和MVRA,测得的和预测的回波之间的CoD分别为0.987和0.89,而通过SVM和MVRA,MAE分别为0.29和1.07。

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