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Development of a novel flyrock distance prediction model using BPNN for providing blasting operation safety

机译:使用BPNN开发新型飞石距离预测模型以提供爆破作业安全性

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摘要

One of the threatening safety problems in mines is flyrock distance range through blasting operation. Inaccurate evaluation of flyrock can cause fatal and nonfatal accidents. The presented results in this paper verify efficiency of artificial neural network in prediction of flyrock considering all influencing parameters such as: hole diameter, height, subdrilling, number of holes, spacing, burden, ANFO amount, dynamite weight, stemming, powder factor, specific drilling, and delay time. In this research, optimum structure of network was determined by studying different transfer functions and number of the neurons using a programming code. In this case, optimum structure configuration is logsig transfer functions for the two hidden layers and tansig or logsig one for output, and there are eight neurons in each hidden layers. By calculating strength of relationship between flyrock and all influencing parameters using cosine amplitude method (CAM), the powder factor is defined as most effective parameter on the flyrock.
机译:矿山中威胁性最大的安全问题之一是爆破作业造成的飞石距离范围。飞石的评估不正确会导致致命和非致命事故。本文提出的结果验证了人工神经网络在考虑所有影响参数的情况下预测飞石的效率,这些参数包括:孔直径,高度,子钻孔,孔数,间距,负担,ANFO量,炸药重量,茎,粉状因子,比重钻孔和延迟时间。在这项研究中,通过使用编程代码研究不同的传递函数和神经元数量来确定网络的最佳结构。在这种情况下,最佳的结构配置是两个隐藏层的逻辑转移函数,以及用于输出的tansig或logig传递函数,每个隐藏层中都有八个神经元。通过使用余弦振幅法(CAM)计算飞石与所有影响参数之间关系的强度,将粉体因子定义为飞石上最有效的参数。

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