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首页> 外文期刊>International Journal of Rock Mechanics and Mining Sciences >Application of artificial neural networks to fracture analysis at the Aspo HRL, Sweden: fracture sets classification
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Application of artificial neural networks to fracture analysis at the Aspo HRL, Sweden: fracture sets classification

机译:人工神经网络在瑞典Aspo HRL裂缝分析中的应用:裂缝集分类

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This study investigates the potential of artificial neural networks (ANNs) to recognize, classify and predict patterns of different fracture sets in the top 450 m in crystalline rocks at the Aspo Hard Rock Laboratory (HRL), Southeastern Sweden. ANNs are computer systems composed of a number of processing elements that are interconnected in a particular topology which is problem dependent. ANNs have the ability to learn from examples using different learning algorithms; these involve incremental adjustment of a set of parameters to minimize the error between the desired output and the actual network output. Six fracture-sets with particular ranges of strike and dip have been distinguished. A series of trials were carried out using back propagation (BP) neural networks for supervised classification, and the BP networks recognized different fracture sets accurately. Self-organizing neural networks have been used for data clustering analysis with supervised learning algorithms; (competitive learning and learning vector quantization), and unsupervised learning algorithms; (self-organizing maps). The self-organizing networks adapted successfully to different fracture clusters (sets). A set of trials has been carried out to investigate the effect of changing the network's topologies on the performance of the BP networks. Using two hidden layers with tan-sigmoid and linear transfer functions was beneficial for the performance of BP classification. ANNs improved fracture sets classification that was based on Kamb contouring method with constraint on areas between fracture clusters.
机译:这项研究调查了瑞典东南部Aspo硬岩实验室(HRL)人工晶体网络(ANN)识别,分类和预测顶部450 m晶体岩石中不同裂缝组模式的潜力。人工神经网络是由许多处理元件组成的计算机系统,这些处理元件以特定的拓扑互连,该拓扑取决于问题。人工神经网络具有使用不同的学习算法从示例中学习的能力;这些包括逐步调整一组参数,以最大程度地减少所需输出与实际网络输出之间的误差。区分了具有特定范围的走向和下降的六个裂缝组。使用反向传播(BP)神经网络进行监督分类的一系列试验,并且BP网络可以准确识别不同的裂缝集。自组织神经网络已用于带有监督学习算法的数据聚类分析; (竞争性学习和学习矢量量化),以及无监督的学习算法; (自组织地图)。自组织网络成功地适应了不同的裂缝群(组)。已经进行了一系列试验,以研究更改网络拓扑结构对BP网络性能的影响。使用两个具有tan乙状结肠和线性传递函数的隐藏层有利于BP分类的性能。人工神经网络改进了基于Kamb等值线法的裂缝集分类,并限制了裂缝簇之间的区域。

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