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Superiority of neural networks for pillar stress prediction in bord and pillar method

机译:用神经网络预测线和柱法中的柱应力

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摘要

Estimation of pillar stress is a crucial task in underground mining. This is used to determine pillar dimensions, room width, roof conditions, and general mine layout. There are several methods for estimating induced stresses due to underground excavations, i.e., empirical methods, numerical solutions, and currently artificial intelligence (AI). AI based techniques are gradually gaining popularity especially for problems involving uncertainty. In this paper, an attempt has been made to predict stresses developed in the pillars of bord and pillar mining using artificial neural network. A comparison has also been done to compare the obtained results with the boundary element method as well as measured field values. For this purpose, a multilayer perceptron neural network model was developed. A number of architectures with different hidden layers and neurons were tried to get the best solution, and the architecture 5-20-8-1 was found to be an optimum solution. Sensitivity analysis was also carried out to understand the influence of important input parameters on pillar stress concentration.
机译:估算柱应力是地下采矿的关键任务。这用于确定支柱尺寸,房间宽度,屋顶条件和总体矿井布局。有几种方法可以估算地下开挖引起的感应应力,即经验方法,数值解和目前的人工智能(AI)。基于AI的技术正在逐渐普及,尤其是对于涉及不确定性的问题。在本文中,已经尝试使用人工神经网络来预测在博尔德矿山和矿山开采中所产生的应力。还进行了比较,以比较所获得的结果与边界元法以及实测场值。为此,开发了多层感知器神经网络模型。尝试了许多具有不同隐藏层和神经元的体系结构以获得最佳解决方案,发现5-20-8-1体系结构是最佳解决方案。还进行了敏感性分析,以了解重要输入参数对支柱应力集中的影响。

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