Modern Mining ›› 2016, Vol. 32 ›› Issue (09): 18-20+27.
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Chen Qiong1,Ou Hongning1,Jiang Qun1,Zhang Qinli2,Liu Weijun2
Online:
Published:
Abstract: In order to obtain the reasonable blasting parameters,the RBF neural network is established,which is used to optimize blasting parameters.The sample data of 8 actual mines are counted,the six influence factors(the volume weight,modulus of elasticity,compressive strength,tensile strength,friction angle and bond strength)that affect the rock mass blastability are considered,which are taken as the input factors of the RBF neural network model,and the factors(rows space,depth of holes and once consumption of dynamite)that influenced blasting parameters are taken as the output factors,so the sample parameters are conducted optimization selection,and the optimal blasting parameters are obtained.Taking the medium-length hole blasting of a mine as an example,the blasting parameters of the mine are conducted optimization selection by the RBF neural network model,the results show that the row space of holes are 1.30 m,the space of holes are 2.20 m,and the explosives consumption is 0.32 kg/t.The practical application proves that the blasting effect is good, and the blasting parameters are reasonable.
Key words: Blasting parameters, RBF neural network, Sample data, Influence factors
CHEN Qiong, 欧Hong-Ning , JIANG Qun, ZHANG Qin-Li, LIU Wei-Jun. Optimization Selection of Blasting Parameters Based on RBF Neural Network[J]. Modern Mining, 2016, 32(09): 18-20+27.
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