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Application of ANNs and MVLRA for Estimation of Specific Charge in Small Tunnel

机译:人工神经网络和MVLRA在小隧道比荷估算中的应用

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摘要

Drilling and blasting method has been used for many years in underground excavations and still is very popular because of its many advantages. Blast performance is ordinarily measured by specific charge and by explosive consumption of broken rock. The empirical models are available for estimation of specific charge and different sets of parameters. This paper presents the possibility of applying artificial neural networks (ANNs) to estimate the specific charge in various conditions of tunnel blasting. Among available existing parameters in the literature, some of the most influencing parameters are selected. After running different models, P wave, rock-quality designation (RQD), tunnel area, maximum depth of the hole, and coupling ratio (charge-to-hole diameter) are selected to estimate specific charge of tunnel blasting under various conditions. Also, conventional multi variable linear regression analysis (MVLRA) is applied to estimate specific charge. The results show that the accuracy of ANN is more than the MVLRA-based models.
机译:钻孔和爆破方法已经在地下挖掘中使用了很多年,并且由于其许多优点而仍然很受欢迎。爆炸性能通常通过特定的装药量和碎石的爆炸消耗来衡量。经验模型可用于估算比电荷和不同的参数集。本文提出了应用人工神经网络(ANN)估算隧道爆破各种条件下的比电荷的可能性。在文献中可用的现有参数中,选择一些最具影响力的参数。在运行不同的模型后,选择P波,岩石质量指定(RQD),隧道面积,最大孔深和耦合比(装药直径)来估计各种条件下的隧道爆破比装药量。此外,常规的多变量线性回归分析(MVLRA)用于估算比电荷。结果表明,人工神经网络的准确性要高于基于MVLRA的模型。

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