混合优化叠加集合标记神经网络在钻爆隧道涌水预测中的应用

IF 6.7 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Hanan Samadi , Arsalan Mahmoodzadeh , Ahmed Babeker Elhag , Abed Alanazi , Abdullah Alqahtani , Shtwai Alsubai
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引用次数: 0

摘要

施工阶段隧道涌水作为工程地质灾害之一,其准确估算是工程推进和利用的关键因素之一,特别是在设计初期。为了解决这个问题,目前的研究开发了几种预测网络,包括混合优化监督学习模型,如adadell -递归神经网络(AdaD-RNN)、adagrad -长短期记忆(AdaG-LSTM)、adagrad -门控递归单元(AdaG-GRU)、Adam优化-反向传播神经网络(AO-BPNN)、自动线性前向逐步信息准则(ALFS-IC)和一种新的堆叠集成模型。这些模型使用从伊朗13个钻爆公路隧道收集的数据库进行训练和验证。利用ALFS-IC建立了一种新的隧道WI预测经验模型,具有较高的预测精度(R2 = 0.95)。这些模型在一个具有5个特征和600个数据点的数据集上进行训练(85%训练,15%测试),包括隧道的物理因素(隧道深度、地下水位)、材料的地质力学特征(岩石质量标识)和突水特征(水量属性)。重要性排序和多任务敏感性分析表明,地下水位和产水量是影响公路隧道WI的最主要参数。分析结果表明,预测值与实测值具有较强的相关性,其中,stacking-ensemble模型和AdaG-GRU模型预测WI进入隧道的准确率较高,R2分别为0.97和0.95,NRMSE分别为0.0017和0.0019。叠加集成算法的准确率最高,达到90%,AUC-ROC值达到98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Application of hybrid-optimized and stacking-ensemble labeled neural networks to predict water inflow in drill-and-blast tunnels

Application of hybrid-optimized and stacking-ensemble labeled neural networks to predict water inflow in drill-and-blast tunnels
The precise estimation of water inflow (WI) into the tunnel during the construction phase, as one of the engineering geological hazards, is one of the most critical factors for project advancement and utilization, especially in the early design stages. To address this, the current study developed several predictor networks, including hybrid-optimized supervised learning models such as AdaDelta-recurrent neural network (AdaD-RNN), AdaGrad-long short-term memory (AdaG-LSTM), AdaGrad-gated recurrent unit (AdaG-GRU), Adam optimization-back propagation neural network (AO-BPNN), automatic linear forward stepwise information criterion (ALFS-IC), and a novel stacking-ensemble model. These models were trained and validated using a collected database from 13 drill-and-blast road tunnels in Iran. A new empirical model for predicting tunnel WI was introduced using ALFS-IC with high accuracy (R2 = 0.95). The models were trained on a dataset with five features and 600 data points (85 % training, 15 % testing), including physical factors of tunnels (tunnel depth, groundwater level), geomechanical characteristics of materials (rock quality designation), and water inrush feature (water yield property). The importance ranking and multi-task sensitivity analysis revealed that groundwater level and water yield property are the most influential parameters on the road tunnel WI. The analysis indicated strong correlations between predicted and observed values, with the stacking-ensemble and AdaG-GRU models exhibiting superior accuracy in predicting WI into the tunnel with R2 = 0.97 and 0.95 and NRMSE = 0.0017 and 0.0019, respectively. The stacking-ensemble algorithm had the highest accuracy rate of 90 % and AUC-ROC value of 98 %.
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来源期刊
Tunnelling and Underground Space Technology
Tunnelling and Underground Space Technology 工程技术-工程:土木
CiteScore
11.90
自引率
18.80%
发文量
454
审稿时长
10.8 months
期刊介绍: Tunnelling and Underground Space Technology is an international journal which publishes authoritative articles encompassing the development of innovative uses of underground space and the results of high quality research into improved, more cost-effective techniques for the planning, geo-investigation, design, construction, operation and maintenance of underground and earth-sheltered structures. The journal provides an effective vehicle for the improved worldwide exchange of information on developments in underground technology - and the experience gained from its use - and is strongly committed to publishing papers on the interdisciplinary aspects of creating, planning, and regulating underground space.
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