首页> 外文会议>Proceedings of the Thirty-Second Annual Conference on Explosives and Blasting Technique vol.1 >EVALUATION OF ARTIFICIAL NEURAL NETWORKS AS A RELIABLE TOOL IN BLAST DESIGN
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EVALUATION OF ARTIFICIAL NEURAL NETWORKS AS A RELIABLE TOOL IN BLAST DESIGN

机译:人工神经网络在爆破设计中作为可靠工具的评估

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This paper is an evaluation of Artificial Neural Networks (ANN) as a tool in the design of the geometry of surface blast patterns. The built model uses eight different parameters, which affect the design of the pattern. Those parameters are rock type, stratification, blasthole diameter, bench height, type of explosive, priming position, powder factor and fragmentation size required. The network was trained to predict burden and spacing of the blast pattern. The model was built and trained (back-propagation technique) using 43 case histories collected from the literature. The model has then been validated using 16 cases from operational quarries.
机译:本文是对人工神经网络(ANN)进行评估的工具,该工具可用于设计表面爆炸图案的几何形状。构建的模型使用八个不同的参数,这会影响模式的设计。这些参数是岩石类型,分层,爆破孔直径,工作台高度,炸药类型,引爆位置,粉末系数和所需碎块尺寸。该网络经过培训可以预测爆炸模式的负担和间隔。使用从文献中收集到的43个案例历史来构建和训练模型(反向传播技术)。然后使用来自运营采石场的16个案例对模型进行了验证。

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