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A NEURAL NETWORK APPROACH TO PREDICT MEAN PARTICLE SIZE IN ROCK BLAST FRAGMENTATION

机译:一种神经网络方法,以预测岩石爆破碎片中均值粒径

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Neural network methodology is used to predict mean particle size resulting from rock blast fragmentation. A blast data base developed in a previous study is used in the current study. A part of this blast data was used to train a single-hidden layer back propagation neural network model for each of the similarity groups obtained in the same previous study. Levenberg-Marquardt algorithm provided the most stable and efficient training out of the four algorithms evaluated. An extensive analysis was performed using a part of the blast data to estimate the optimum number of units for the hidden layer for each similarity group. The remaining blast data are used to validate the trained neural network models. Capability of the developed neural network models is determined by comparing predictions with measured values and predictions based on one of the most applied fragmentation prediction models appearing in the blasting literature. Prediction capability of the neural network models was found to be strong and better than the existing most applied model. Diversity of the blasts data used is one of the most important aspects of the developed models. The developed neural network models are suitable for practical use at mines.
机译:神经网络方法用于预测由岩爆碎片产生的平均粒度。在前一项研究中开发的爆炸数据库用于目前的研究。该爆炸数据的一部分用于训练用于在同一先前研究中获得的每个相似性组的单隐藏层面传播神经网络模型。 Levenberg-Marquardt算法提供了从评估的四种算法中获得最稳定和最有效的训练。使用BLAST数据的一部分进行广泛的分析来估计每个相似度组的隐藏层的最佳单位数。剩余的BLAST数据用于验证培训的神经网络模型。通过将预测与基于爆破文献中出现的最施加的碎片预测模型之一进行比较来确定发达的神经网络模型的能力。发现神经网络模型的预测能力比现有最应用的模型更强大,更好。所使用的爆炸数据的多样性是开发模型中最重要的方面之一。发达的神经网络模型适用于矿山的实际应用。

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