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A novel intelligent approach to simulate the blast-induced flyrock based on RFNN combined with PSO

机译:一种基于RFNN结合PSO模拟爆炸引起的锭型爆炸诱导锭型的新型智能方法

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摘要

This research focuses to propose a new hybrid approach which combined the recurrent fuzzy neural network (RFNN) with particle swarm optimization (PSO) algorithm to simulate the flyrock distance induced by mine blasting. Here, this combination is abbreviated using RFNN-PSO. To evaluate the acceptability of RFNN-PSO model, adaptive neuro-fuzzy inference system (ANFIS) and non-linear regression models were also used. To achieve the objective of this research, 72 sets of data were collected from Shur river dam region, in Iran. Maximum charge per delay, stemming, burden, and spacing were considered as input parameters in the models. Then, the performance of the RFNN-PSO model was evaluated against ANFIS and non-linear regression models. Correlation coefficient (R~2), Nash and Sutcliffe (NS), mean absolute bias error (MABE), and root-mean-squared error (RMSE) were used as comparing statistical indicators for the assessment of the developed approach's performance. Results show a satisfactory achievement between the actual and predicted flyrcok values by RFNN-PSO with R~2, NS, MABE, and RMSE being 0.933, 0.921, 13.86, and 15.79, respectively.
机译:本研究侧重于提出一种新的混合方法,该混合方法将经常性模糊神经网络(RFNN)与粒子群优化(PSO)算法组合以模拟挖掘爆破引起的乘法力距离。这里,使用RFNN-PSO缩写该组合。为了评估RFNN-PSO模型的可接受性,还使用自适应神经模糊推理系统(ANFIS)和非线性回归模型。为实现本研究的目标,从伊朗的Shur River Dam Region收集了72套数据。每次延迟最大电荷,源头,负担和间距被认为是模型中的输入参数。然后,评估RFNN-PSO模型的性能对ANFIS和非线性回归模型进行评估。相关系数(R〜2),NASH和SUTCLIFFE(NS),平均绝对偏置误差(MABE)和根均平方误差(RMSE)用作比较统计指标,以评估发达的方法的性能。结果在RFNN-PSO与R〜2,NS,MABE和RMSE的实际和预测的Flyrcok值之间的令人满意的成就分别为0.933,0.921,13.86和15.79。

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