基于RF-AHP模型的富水隧道突涌水风险预测

    Prediction model for water inrush risk in water-rich tunnels based on RF-AHP model

    • 摘要: 为实现对富水隧道开挖过程中发生突涌水风险等级的快速准确判断,提出了一种基于AHP改进的RF富水隧道风险预测模型。基于232个隧道断面突涌水事故的分析,遴选出涵盖水文地质条件、设计因素和施工因素的13个因素作为富水隧道突涌水风险的评价指标,构建了富水隧道突涌水风险指标评价体系;采用机器学习的方法,建立了富水隧道突涌水事故数据集,并对其进行预处理;通过数据集的应用及参数优化处理,计算出RF模型各指标权重,再通过AHP对其权重进行优化,建立了RF-AHP模型,将RF模型和RF-AHP模型的预测结果进行了对比分析,并针对RF-AHP模型进行了实例验证。结果表明:RF-AHP模型的准确率达到98%,优于RF模型,RF-AHP模型性能得到提升,在富水隧道突涌水风险预测方面具有较好的性能,可为富水隧道突涌水风险预测提供新的手段。

       

      Abstract: In order to rapidly and accurately determine the risk level of water inrush during the excavation of water-rich tunnels, an improved RF water-rich tunnel risk prediction model based on AHP is proposed.Based on the analysis of 232 tunnel section water inrush accidents, 13 factors covering hydrogeological conditions, design factors and construction factors were selected as evaluation indicators for water inrush risk of water-rich tunnel, and a evaluation index system of water inrush risk of water-rich tunnel was constructed.A dataset of water inrush accidents in water-rich tunnel was established and preprocessed by machine learning methods.Through the application of the dataset and parameter optimization, the weights of each index of RF model were calculated, and then the weights were optimized by AHP, and a RF-AHP model was established.The prediction results of RF model and RF-AHP model were compared and analyzed, and the RF-AHP model was verified by a case study.The results show that the accuracy of RF-AHP model is 98%, which is superior to the RF model.RF-AHP model has good performance in the prediction of water inrush risk in water-rich tunnel, which can provide a new means for the prediction of water inrush risk in water-rich tunnel.

       

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