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Integrating Rock Engineering Systems device and Artificial Neural Networks to predict stability conditions in an open pit

机译:集成岩石工程系统设备和人工神经网络,以预测露天坑中的稳定条件

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Stability performance of newly open pit slopes are is affected by many factors, namely, overall complex geological environment, water flow, in situ and induced rock stresses, continuous blasting effects and construction methods. It is therefore important to identify the critical parameters affecting slope stability, as well as their interactions, in order to reduce the associated uncertainty and risk. In this paper, we extend a worldwide open pit slope stability database further and build on the use of an open pit mine slope stability index to predict the stability conditions, coupling Rock Engineering Systems (RES) and artificial neural networks, namely, Back Propagation and Self Organising Maps. The Open Pit Mine Slope Stability Index (OPMSSI) can be computed as a simple weighted sum of ratings for all parameters involved in the RES. The basic device used in the Rock Engineering Systems approach is the Generic Interaction Matrix (GIM). By coding the GIM cause-effect coordinates, relevant cause-effect plots are generated indicating interaction intensity and dominance. We propose the coding of the GIM using scatter plots produced by an unsupervised, trained, self-organising map and a comparison with GIM coding through connection weights resulting from a trained back propagation neural network. Depending on the resulting OPMSSI, the approach informs on low, medium and high susceptibility levels associated with stable status, failure at set of benches or overall slope failure, respectively. Verification of results suggests that OPMSSI, resulting from self-organising maps, appears to be superior to a back propagation algorithm in prediction capacity and that the SOM proves to be an informative knowledge extraction tool.
机译:新露天斜坡的稳定性能受到许多因素的影响,即整体复杂地质环境,水流,原位和诱导岩体应力,连续爆破效应和施工方法。因此,重要的是识别影响坡度稳定性的关键参数,以及它们的相互作用,以减少相关的不确定性和风险。在本文中,我们进一步扩展了全球露天倾斜稳定性数据库,并建立了使用敞开的坑矿坡稳定性指标来预测稳定性条件,耦合岩石工程系统(RES)和人工神经网络,即反向传播和自组织地图。敞开的坑矿斜率稳定性指数(OPMSSI)可以计算为RES中涉及的所有参数的简单加权等级。岩石工程系统方法中使用的基本装置是通用交互矩阵(GIM)。通过编码GIM造成效果坐标,产生了相关的原因效果图,其指示相互作用强度和优势。我们提出了使用由无监督,训练,自组织地图的散点图和通过由训练的后传播神经网络产生的连接权重比较的散点图来编写Gim的编码。根据所产生的OPMSSI,该方法可以分别通知与稳定状态相关的低,中和高磁化率水平,分别在一组长凳或整体斜坡故障中失败。结果验证表明,由自组织地图产生的OPMSSI似乎优于预测能力的反向传播算法,并且SOM证明是一种信息性的知识提取工具。

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