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Combination of neural network and ant colony optimization algorithms for prediction and optimization of flyrock and back-break induced by blasting

机译:结合神经网络和蚁群算法对爆破引起的飞石和反冲进行预测和优化

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Blasting is the process of use of explosives to excavate or remove the rock mass. The main objective of blasting operation is to provide proper rock fragmentation and to avoid undesirable environmental impacts such as ground vibration, flyrock and back-break. Therefore, proper predicting and subsequently optimizing these impacts may reduce damage on facilities and equipment. In this study, an artificial neural network (ANN) was developed to predict flyrock and back-break resulting from blasting. To do this, 97 blasting works in Delkan iron mine, Iran, were investigated and required blasting parameters were collected. The most influential parameters on flyrock and back-break, i.e. burden, spacing, hole length, stemming, and powder factor were considered as model inputs. Results of absolute error (Ea) and root mean square error (RMSE) (0.0137 and 0.063 for Ea and RMSE, respectively) reveal that ANN as a powerful tool can predict flyrock and back-break with high degree of accuracy. In addition, this paper presents a new metaheuristic approximation approach based on the ant colony optimization (ACO) for solving the problem of flyrock and back-break in Delkan iron mine. Considering changeable parameters of the ACO algorithm, blasting pattern parameters were optimized to minimize results of flyrock and back-break. Eventually, implementing ACO algorithm, reductions of 61 and 58 % were observed in flyrock and back-break results, respectively.
机译:爆破是使用炸药挖掘或清除岩体的过程。爆破作业的主要目的是提供适当的岩石破碎,并避免不良的环境影响,例如地面振动,飞石和倒塌。因此,正确预测并随后优化这些影响可能会减少对设施和设备的损害。在这项研究中,开发了一个人工神经网络(ANN)来预测爆破引起的飞石和后破坏。为此,对伊朗德尔坎铁矿的97处爆破工程进行了调查,并收集了所需的爆破参数。在飞石和反冲方面最有影响力的参数,即负荷,间距,孔长,茎干和粉末系数被视为模型输入。绝对误差(Ea)和均方根误差(RMSE)的结果(Ea和RMSE分别为0.0137和0.063)表明ANN作为一种功能强大的工具可以高度准确地预测飞石和反冲。此外,本文提出了一种基于蚁群优化(ACO)的新启发式近似方法,用于解决Delkan铁矿的飞石和反冲问题。考虑到ACO算法的可变参数,优化了爆破参数,以最大程度地减少飞石和反折的结果。最终,实施ACO算法后,飞石和反冲结果分别降低了61%和58%。

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