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Application of artificial neural network coupled with genetic algorithm and simulated annealing to solve groundwater inflow problem to an advancing open pit mine

机译:人工神经网络结合遗传算法和模拟退火技术解决露天矿超前开采中的地下水涌入问题

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In this study, hybrid models are designed to predict groundwater inflow to an advancing open pit mine and the hydraulic head (HH) in observation wells at different distances from the centre of the pit during its advance. Hybrid methods coupling artificial neural network (ANN) with genetic algorithm (GA) methods (ANN-GA), and simulated annealing (SA) methods (ANN-SA), were utilised. Ratios of depth of pit penetration in aquifer to aquifer thickness, pit bottom radius to its top radius, inverse of pit advance time and the HH in the observation wells to the distance of observation wells from the centre of the pit were used as inputs to the networks. To achieve the objective two hybrid models consisting of ANN-GA and ANN-SA with 4-5-3-1 arrangement were designed. In addition, by switching the last argument of the input layer with the argument of the output layer of two earlier models, two new models were developed to predict the HH in the observation wells for the period of the mining process. The accuracy and reliability of models are verified by field data, results of a numerical finite element model using SEEP/W, outputs of simple ANNs and some well-known analytical solutions. Predicted results obtained by the hybrid methods are closer to the field data compared to the outputs of analytical and simple ANN models. Results show that despite the use of fewer and simpler parameters by the hybrid models, the ANN-GA and to some extent the ANN-SA have the ability to compete with the numerical models. (C) 2016 Elsevier B.V. All rights reserved.
机译:在这项研究中,设计了混合模型来预测地下水在进洞过程中距进深中心不同距离处的观察井中前进的露天矿和水力压头(HH)的流入量。利用了混合方法,将人工神经网络(ANN)与遗传算法(GA)方法(ANN-GA)和模拟退火(SA)方法(ANN-SA)相结合。含水层中的基坑穿透深度与含水层厚度的比值,基坑底部半径与其顶部半径的比值,基坑前进时间的倒数和观测井中的HH值与观测井距基坑中心的距离之比用作输入到网络。为了实现这一目标,设计了两种混合模型,分别由ANN-GA和ANN-SA组成,其排列为4-5-3-1。此外,通过将两个较早模型的输入层的最后一个参数与输出层的参数进行切换,开发了两个新模型来预测采矿过程中观测井中的HH。通过现场数据,使用SEEP / W的数值有限元模型的结果,简单的人工神经网络的输出以及一些著名的分析解决方案,验证了模型的准确性和可靠性。与分析和简单ANN模型的输出相比,通过混合方法获得的预测结果更接近现场数据。结果表明,尽管混合模型使用了更少,更简单的参数,但ANN-GA和ANN-SA在某种程度上仍具有与数值模型竞争的能力。 (C)2016 Elsevier B.V.保留所有权利。

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