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A new technique to predict fly-rock in bench blasting based on an ensemble of support vector regression and GLMNET

机译:基于支持向量回归和GLMNET的合奏预测长凳爆破苍岩的新技术

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摘要

Fly-rock caused by blasting is one of the dangerous side effects that need to be accurately predicted in open-pit mines. This study proposed a new technique to predict the distance of fly-rock based on an ensemble of support vector regression models (SVRs) and Lasso and elastic-net regularized generalized linear model (GLMNET), called SVRs-GLMNET. It was developed based on a combination of six SVR models and a GLMNET model. Accordingly, the dataset including 210 experimental data was divided into three parts, i.e., training, validating, and testing. Of the whole dataset, 70% was used for the development of the six SVR models first as the sub-models. Subsequently, 20% of the entire dataset (the validating dataset) was used to predict fly-rock based on the six developed SVR models. The predicted results from the six developed SVR models were used as the input variables to establish the GLMNET model (i.e., SVRs-GLMNET model). Finally, the remaining 10% of the dataset was used for testing the performance of the proposed SVRs-GLMNET model. A comparison and evaluation of the six developed SVR models and the proposed SVRs-GLMNET model were implemented based on five statistical criteria, such as mean absolute error (MAE), mean absolute percentage error (MAPE), root-mean-square error (RMSE), variance account for (VAF), and determination of correlation (R~2). The results indicated that the proposed SVRs-GLMNET model provided the most dominant performance in predicting the distance of fly-rock caused by bench blasting in this study with an RMSE of 3.737, R~2 of 0.993, MAE of 3.214, MAPE of 0.018, and VAF of 99.207. Whereas, the other models yielded poorer accuracy with RMSE of 7.058-12.779, R~2 of 0.920-0.972, MAE of 3.438-7.848, MAPE of 0.021-0.055, and VAF of 90.538-97.003.
机译:由爆破引起的飞岩是在露天矿物矿山中需要准确预测的危险副作用之一。本研究提出了一种新的技术,以基于支持向量回归模型(SVRS)和套索和弹性网正则化的线性模型(GLMNET)的集合来预测飞岩的距离,称为SVRS-GLMNET。它是基于六种SVR模型和GLMnet模型的组合开发的。因此,包括210个实验数据的数据集分为三个部分,即培训,验证和测试。在整个数据集中,70%用于首先作为子模型开发六种SVR模型。随后,20%的整个数据集(验证数据集)用于基于六种开发的SVR模型来预测飞岩。来自六种开发的SVR模型的预测结果用作输入变量,以建立GLMNET模型(即,SVRS-GLMNET模型)。最后,剩下的10%的数据集用于测试所提出的SVRS-GLMNET模型的性能。基于五个统计标准实现了六种开发的SVR模型和所提出的SVRS-GLMNET模型的比较和评估,例如平均绝对误差(MAE),平均绝对百分比误差(MAPE),根均方误差(RMSE) ),对(VAF)的方差账户,以及相关性的确定(R〜2)。结果表明,所提出的SVRS-GLMNET模型提供了最主要的性能,在本研究中预测由3.737,R〜2,MAE为3.214,MAE为0.018的MAE的RMSE爆炸引起的飞岩距离最大的性能。为0.018,和99.207的VAF。然而,其他模型产生较差的准确性,RMSE为7.058-12.779,R〜2的0.920-0.972,MAE为3.438-7.848,MAPE为0.021-0.055,以及90.538-97.003的VAF。

著录项

  • 来源
    《Engineering with Computers》 |2021年第1期|421-435|共15页
  • 作者单位

    School of Resources and Safety Engineering Central South University Changsha 410083 Hunan China;

    Institute of Research and Development Duy Tan University Da Nang 550000 Vietnam;

    Department of Surface Mining Mining Faculty Hanoi University of Mining and Geology 18 Vien Street Duc Thang Ward Bac Tu Liem District Hanoi Vietnam Center for Mining Electro-Mechanical Research Hanoi University of Mining and Geology 18 Vien Street Duc Thang Ward Bac Tu Liem District Hanoi Vietnam;

    Faculty of Engineering Centre of Tropical Geoengineering (GEOTROPIK) School of Civil Engineering Universiti Teknologi Malaysia 81310 Johor Bahru Malaysia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Fly-rock; SVRs-GLMNET; Bench blasting; Open-pit mine; Artificial intelligence;

    机译:飞岩;SVRS-GLMNET;长凳爆破;露天矿;人工智能;

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