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Use of an improved ANN model to predict collapse depth of thin and extremely thin layered rock strata during tunnelling

机译:使用改进的ANN模型预测隧道施工过程中薄层和极薄层岩层的塌陷深度

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Numerous collapses have occurred during the excavation of diversion tunnels in the thin and extremely thin layered rock strata at Wudongde Hydropower Station in China. Hence, a reliable method is required to predict the risk and the depth of collapse. However, both theory and practice indicate that one single criterion methods cannot satisfactorily predict the collapse depth accurately. In this study, using an artificial neural network (ANN), an intelligent prediction method has been investigated. Through theoretical and statistical analyses, six input parameters (i.e., cover depth, minor-major principal stress ratio, geological strength index, excavation method, support strength and attitude of rock), have been selected and used in the model. Obtained from three diversion tunnels at Wudongde Hydropower Station, forty-five learning samples and six testing samples were used in the training of the model. The structural parameters and the initial weights of the ANN have been optimized by a genetic algorithm (GA). The trained model was then used to predict the collapse depth of another six excavation sites. The predictions show good agreement with the measurements at the sites. The absolute errors between the predicted and the measured collapse depths are all less than 0.35 m, and the relative errors are all less than 15%. Application of the improved ANN method to the tunnel collapse analysis at Wudongde Hydropower Station confirms its effectiveness in predicting collapse depth during tunnelling. (C) 2015 Elsevier Ltd. All rights reserved.
机译:中国乌东德水电站的薄层和极薄层岩层导流隧洞开挖过程中发生了许多倒塌事故。因此,需要一种可靠的方法来预测崩溃的风险和深度。然而,理论和实践均表明,单一标准方法不能令人满意地准确预测塌陷深度。在这项研究中,使用人工神经网络(ANN),研究了一种智能预测方法。通过理论和统计分析,选择了六个输入参数(即覆盖深度,次要主应力比,地质强度指标,开挖方法,支护强度和岩石姿态)并用于模型中。该模型的训练是从武东德水电站的三个引水隧洞中获得的,其中有45个学习样本和6个测试样本。 ANN的结构参数和初始权重已通过遗传算法(GA)进行了优化。然后,使用经过训练的模型来预测另外六个挖掘地点的坍塌深度。预测结果与现场的测量结果吻合良好。预测坍塌深度与实测坍塌深度之间的绝对误差均小于0.35 m,相对误差均小于15%。改进的人工神经网络方法在乌洞德水电站隧洞倒塌分析中的应用证实了其在预测隧洞塌陷深度中的有效性。 (C)2015 Elsevier Ltd.保留所有权利。

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