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Prediction and minimization of blast-induced flyrock using gene expression programming and firefly algorithm

机译:基因表达编程和萤火虫算法使用基因诱导的锭剂的预测与最小化

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摘要

The main objective of blasting operations is to provide proper rock fragmentation and to avoid undesirable environmental impacts such as flyrock. Flyrock is the source of most of the injuries and property damage in a majority of blasting accidents in surface mines. Therefore, proper prediction and subsequently optimization of flyrock distance may reduce the possible damages. The first objective of this study is to develop a new predictive model based on gene expression programming (GEP) for predicting flyrock distance. To achieve this aim, three granite quarry sites in Malaysia were investigated and a database composed of blasting data of 76 operations was prepared for modelling. Considering changeable GEP parameters, several GEP models were constructed and the best one among them was selected. Coefficient of determination values of 0.920 and 0.924 for training and testing datasets, respectively, demonstrate that GEP predictive equation is capable enough of predicting flyrock. The second objective of this study is to optimize blasting data for minimization purpose of flyrock. To do this, a new non-traditional optimization algorithm namely firefly algorithm (FA) was selected and used. For optimization purposes, a series of analyses were performed on the FA parameters. As a result, implementing FA algorithm, a reduction of about 34 % in results of flyrock distance (from 60 to 39.793 m) was observed. The obtained results of this study are useful to minimize possible damages caused by flyrock.
机译:爆破作业的主要目的是提供适当的岩石碎片,并避免不希望的环境影响,如英超。 Flyrock是大部分爆破事故在地表矿山的大部分伤害和财产损失的源泉。因此,适当的预测和随后优化超级距离可以降低可能的损坏。本研究的第一个目的是发展基于基因表达编程(GEP)的新预测模型来预测乘套距离。为实现这一目标,调查了马来西亚的三个花岗岩采石场,并准备了由76个操作的爆破数据组成的数据库进行建模。考虑到可变的GEP参数,构建了几种GEP模型,选择了其中最好的GEP模型。测定值0.920和0.924的训练和测试数据集分别证明GEP预测等式能够足够预测锭码。本研究的第二个目的是优化爆破数据以最大限度地减少繁荣的目的。为此,选择并使用了一种新的非传统优化算法即萤火虫算法(FA)。为了优化目的,对FA参数进行了一系列分析。结果,实施FA算法,观察到增速距离(从60〜39.793m)的约34%的减少。本研究的所得结果可用于最大限度地减少加鸟引起的可能损害。

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