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Rockburst Prediction Model Based on Entropy Weight Integrated with Grey Relational BP Neural Network

机译:基于灰色关系BP神经网络集成的熵预测模型

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A rockburst prediction model of the entropy weight grey relational backpropagation (BP) neural network is developed. The model needs to select the evaluation factors according to the engineering practice and establish the sample library. The entropy weight method is used to calculate the objective weight of the characteristic factors, and the similarity between the samples is calculated by the combination of grey relational theory and the entropy method. The training sample of the BP neural network is selected by threshold determination. Finally, we use the trained neural network to estimate the rockburst intensity grade of samples to be tested. This model is applied to the rockburst prediction of Qamchiq tunnel project, and the prediction results are in good agreement with the actual conditions of the subsequent construction, thus verifying the feasibility and effectiveness of the model in the rockburst prediction.
机译:开发了一种熵重量灰色关系背部经验(BP)神经网络的摇滚难预测模型。该模型需要根据工程实践选择评估因子并建立样本库。熵权法用于计算特征因子的客观重量,并通过灰色关系理论和熵方法的组合来计算样品之间的相似性。通过阈值确定选择BP神经网络的训练样本。最后,我们使用训练有素的神经网络来估算待测样品的摇滚强度等级。该模型应用于QAMCHIQ隧道项目的岩爆预测,预测结果与后续结构的实际条件良好,从而验证了模型在岩爆预测中的可行性和有效性。

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