AbstractA successful and favorable explosion not only causes a proper rock fragmentation, but also decreases th'/> Optimization of flyrock and rock fragmentation in the Tajareh limestone mine using metaheuristics method of firefly algorithm
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Optimization of flyrock and rock fragmentation in the Tajareh limestone mine using metaheuristics method of firefly algorithm

机译:应用萤火虫算法的元启发式方法优化塔哈雷石灰岩矿山中飞石和岩石破碎

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AbstractA successful and favorable explosion not only causes a proper rock fragmentation, but also decreases the unfavorable and unwanted environmental issues caused by explosion such as ground vibration, flyrock, air-overpressure and back-break. Therefore, anticipation and optimization of these issues produced by blasting operations is significant. In this study, an attempt has been made to design the effective factors on Tajareh limestone mine explosion [i.e., burden, blast-hole, spacing, hole length, sub-drilling, stemming, powder factor, charge in each delay and Geological Strength Index (GSI)] in order to reduce improper fragmentation and flyrock. Since the experimental methods are not suitable in terms of accuracy, using artificial neural network (ANN) and firefly algorithms, flyrock and rock fragmentation were predicted and optimized, respectively. After collecting data and selecting the most effective parameters on flyrock and rock fragmentation, an ANN model was developed, and then its results were called by firefly algorithm for optimizing process. ANN results according to coefficient of determination (R2) and root mean square error (RMSE) were obtained as 0.94 and 0.1, 0.93 and 0.09, respectively, for fragmentation and flyrock. The outcome results of modeling and optimization showed a decrease of 42.9 and 32.9% in results of flyrock and rock fragmentation, respectively. In addition, results of optimization process were obtained as: 2 m of burden, 2.9 m of spacing, 7.5 m of hole length, 0.7 m of sub-drilling, 1.9 m of obstruction length, 0.69 kg/m3of powder factor, 1443 kg of charge in each delay and 55.5 of GSI. Based on the obtained results of sensitivity analysis, it was found that GSI and burden receive the highest influence values on both flyrock and rock fragmentation.
机译: Abstract 成功且有利的爆炸不仅会导致适当的岩石碎裂,而且会减少爆炸引起的不利和有害的环境问题,例如地面振动,飞石,空气超压和反冲。因此,对爆破作业产生的这些问题的预期和优化是很重要的。在这项研究中,已尝试设计影响塔加里赫石灰石矿山爆炸的有效因素[即负担,爆破孔,间距,孔长,钻眼,填塞,粉末因素,每次延误中的装药量和地质强度指数(GSI)],以减少不适当的碎片和飞石。由于实验方法在准确性上不合适,因此使用人工神经网络(ANN)和萤火虫算法分别对飞石和岩石碎片进行了预测和优化。在收集数据并选择最有效的飞石和岩石破碎参数之后,开发了一个ANN模型,然后通过萤火虫算法调用其结果以优化过程。根据确定系数( R 2 )的ANN结果和均方根误差(RMSE)分别为0.94和0.1、0.93和0.09 ,用于碎片和飞石。建模和优化的结果表明,飞石和碎石的结果分别减少了42.9%和32.9%。此外,优化过程的结果为:负载2 m,间距2.9 m,孔长7.5 m,钻头0.7 m,障碍物长度1.9 m,0.69 kg / m <上标> 3 上粉因子,每次延迟1443 kg电荷和55.5 GSI。根据获得的敏感性分析结果,发现GSI和负荷对飞石和碎石的影响最大。

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