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Three hybrid intelligent models in estimating flyrock distance resulting from blasting

机译:估算爆破飞石距离的三种混合智能模型

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Flyrock is an adverse effect produced by blasting in open-pit mines and tunnelling projects. So, it seems that the precise estimation of flyrock is essential in minimizing environmental effects induced by blasting. In this study, an attempt has been made to evaluate/predict flyrock induced by blasting through applying three hybrid intelligent systems, namely imperialist competitive algorithm (ICA)-artificial neural network (ANN), genetic algorithm (GA)-ANN and particle swarm optimization (PSO)-ANN. In fact, ICA, PSO and GA were used to adjust weights and biases of ANN model. To achieve the aim of this study, a database composed of 262 datasets with six model inputs including burden to spacing ratio, blast-hole diameter, powder factor, stemming length, the maximum charge per delay, and blast-hole depth and one output (flyrock distance) was established. Several parametric investigations were conducted to determine the most effective factors of GA, ICA and PSO algorithms. Then, at the end of modelling process of each hybrid model, eight models were constructed and their results were checked considering two performance indices, i.e., root mean square error (RMSE) and coefficient of determination (R (2)). The obtained results showed that although all predictive models are able to approximate flyrock, PSO-ANN predictive model can perform better compared to others. Based on R (2), values of (0.943, 0.958 and 0.930) and (0.958, 0.959 and 0.932) were found for training and testing of ICA-ANN, PSO-ANN and GA-ANN predictive models, respectively. In addition, RMSE values of (0.052, 0.045 and 0.057) and (0.045, 0.044 and 0.058) were achieved for training and testing of ICA-ANN, PSO-ANN and GA-ANN predictive models, respectively. These results show higher efficiency of the PSO-ANN model in predicting flyrock distance resulting from blasting. Moreover, sensitivity analysis shows that hole diameter is more effective than others.
机译:飞石是露天矿爆破和隧道工程产生的不利影响。因此,似乎对飞石的精确估算对于使爆破引起的环境影响最小化至关重要。在这项研究中,已经尝试通过应用三种混合智能系统来评估/预测爆破引起的飞石,即帝国主义竞争算法(ICA)-人工神经网络(ANN),遗传算法(GA)-ANN和粒子群优化(PSO)-人工神经网络。实际上,ICA,PSO和GA用于调整ANN模型的权重和偏差。为了达到本研究的目的,该数据库由262个数据集组成,其中包含6种模型输入,包括负担与间距比,爆破孔直径,粉末系数,茎长,每次延迟的最大装料量以及爆破孔深度和一个输出(飞石距离)成立。进行了几次参数研究,以确定GA,ICA和PSO算法的最有效因素。然后,在每个混合模型的建模过程结束时,构建了8个模型,并考虑了两个性能指标即均方根误差(RMSE)和确定系数(R(2))来检查其结果。所得结果表明,尽管所有预测模型都能够近似飞石,但PSO-ANN预测模型的性能要优于其他模型。根据R(2),分别找到(0.943、0.958和0.930)和(0.958、0.959和0.932)的值分别训练和测试ICA-ANN,PSO-ANN和GA-ANN预测模型。此外,分别用于训练和测试ICA-ANN,PSO-ANN和GA-ANN预测模型的RMSE值分别为(0.052、0.045和0.057)和(0.045、0.044和0.058)。这些结果表明,PSO-ANN模型在预测爆破引起的飞石距离方面具有更高的效率。此外,敏感性分析表明,孔径比其他方法更有效。

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