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Several non-linear models in estimating air-overpressure resulting from mine blasting

机译:估算矿山爆破产生的空气超压的几种非线性模型

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摘要

This research presents several non-linear models including empirical, artificial neural network (ANN), fuzzy system and adaptive neuro-fuzzy inference system (ANFIS) to estimate air-overpressure (AOp) resulting from mine blasting. For this purpose, Miduk copper mine, Iran was investigated and results of 77 blasting works were recorded to be utilized for AOp prediction. In the modeling procedure of this study, results of distance from the blast-face and maximum charge per delay were considered as predictors. After constructing the non-linear models, several performance prediction indices, i.e. root mean squared error (RMSE), variance account for (VAF), and coefficient of determination (R~2) and total ranking method are examined to choose the best predictive models and evaluation of the obtained results. It is obtained that the ANFIS model is superior to other utilized techniques in terms of R~2, RMSE, VAF and ranking herein. As an example, RMSE values of 5.628, 3.937, 3.619 and 2.329 were obtained for testing datasets of empirical, ANN, fuzzy and ANFIS models, respectively, which indicate higher performance capacity of the ANFIS technique to estimate AOp compared to other implemented methods.
机译:这项研究提出了几种非线性模型,包括经验,人工神经网络(ANN),模糊系统和自适应神经模糊推理系统(ANFIS),用于估算爆破产生的空气超压(AOp)。为此,对伊朗米杜克(Miduk)铜矿进行了调查,并记录了77处爆破工程的结果,可用于AOp预测。在这项研究的建模过程中,距爆破面的距离和每个延迟的最大电荷的结果被视为预测因素。在构建了非线性模型之后,检查了几个性能预测指标,即均方根误差(RMSE),方差占比(VAF)和确定系数(R〜2)以及总排名方法,以选择最佳的预测模型和评估所得结果。获得的ANFIS模型在R〜2,RMSE,VAF和本文中的排名方面优于其他利用的技术。例如,分别用于测试经验模型,ANN模型,模糊模型和ANFIS模型的数据集,RMSE值分别为5.628、3.937、3.619和2.329,这表明ANFIS技术估计AOp的性能比其他已实现方法更高。

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