Enhancing Tunnel Boring Machine Penetration Rate Predictions through Particle Swarm Optimization and Elman Neural Networks

被引:4
作者
Zhang, Yuwei [1 ,2 ]
Liu, Lianbaichao [1 ,2 ]
Song, Zhanping [1 ,2 ]
Zhao, Yirui [1 ,2 ]
He, Shimei [3 ]
机构
[1] Xian Univ Architecture & Technol, Sch Civil Engn, Xian 710055, Peoples R China
[2] Shaanxi Key Lab Geotech & Underground Space Engn, Xian 710055, Peoples R China
[3] 5th Engn Co Ltd China Railway Construct Bridge Eng, 1000 Middle Sect Shulong Ave, Chengdu 610500, Peoples R China
基金
中国国家自然科学基金;
关键词
Tunnel boring machine (TBM); Penetration rate; Particle swarm optimization; Neural network; Fusion algorithm; PERFORMANCE PREDICTION; MODEL;
D O I
10.1061/JCEMD4.COENG-14788
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Accurate prediction of tunnel boring machine (TBM) penetration rates is of great significance for intelligent TBM construction. Traditional empirical and theoretical models of TBM penetration rates are difficult to adapt to complex and changeable formation environments. To improve the adaptability, this paper proposes a TBM penetration rate prediction model based on the particle swarm optimization (PSO)-Elman algorithm fusion. Particle swarm optimization (PSO) was used to find the optimal connection weight matrix, which was inserted into the Elman network, and the TBM penetration rate was predicted by the machine learning method. This study examined field data from two distinct tunnel sections, focusing on their geological conditions, construction challenges, and environmental impacts. By analyzing the characteristics unique to these sites, the research offers a comparative perspective on tunnel engineering in diverse settings. Five parameters-uniaxial compressive strength (UCS), rock integrity index (Kv), cutter head thrust (Fn), cutter head speed (RPM), and penetration degree (P)-were selected as the input parameters. The TBM penetration rate was estimated by neural network training of the model. The results show that the PSO method effectively can overcome the problem of being prone to a local minimum using the single Elman method, and the PSO-Elman model has a fast convergence speed and high accuracy. In the 20 groups of experimental samples selected, the mean absolute percentage error (MAPE) was 3.38%, and the coefficient of determination (R2) was 0.936. The prediction quality was better than that of the single Elman method or the backpropagation neural network (BP) method. The study yields specific insights into efficient tunnel construction methodologies and practical neural network tools for risk management, highlighting innovative approaches in environmental preservation and safety enhancement in tunnel engineering.
引用
收藏
页数:12
相关论文
共 45 条
[11]   A TBM advance rate prediction method considering the effects of operating factors [J].
Jing, Liu-jie ;
Li, Jian-bin ;
Zhang, Na ;
Chen, Shuai ;
Yang, Chen ;
Cao, Hong-bo .
TUNNELLING AND UNDERGROUND SPACE TECHNOLOGY, 2021, 107
[12]  
Kennedy J, 1995, 1995 IEEE INTERNATIONAL CONFERENCE ON NEURAL NETWORKS PROCEEDINGS, VOLS 1-6, P1942, DOI 10.1109/icnn.1995.488968
[13]   Application of deep neural networks in predicting the penetration rate of tunnel boring machines [J].
Koopialipoor, Mohammadreza ;
Tootoonchi, Hossein ;
Armaghani, Danial Jahed ;
Mohamad, Edy Tonnizam ;
Hedayat, Ahmadreza .
BULLETIN OF ENGINEERING GEOLOGY AND THE ENVIRONMENT, 2019, 78 (08) :6347-6360
[14]   Advanced prediction of tunnel boring machine performance based on big data [J].
Li, Jinhui ;
Li, Pengxi ;
Guo, Dong ;
Li, Xu ;
Chen, Zuyu .
GEOSCIENCE FRONTIERS, 2021, 12 (01) :331-338
[15]   A hybrid GEP and WOA approach to estimate the optimal penetration rate of TBM in granitic rock mass [J].
Li, Zimu ;
Bejarbaneh, Behnam Yazdani ;
Asteris, Panagiotis G. ;
Koopialipoor, Mohammadreza ;
Armaghani, Danial Jahed ;
Tahir, M. M. .
SOFT COMPUTING, 2021, 25 (17) :11877-11895
[16]   Prediction of rock mass parameters in the TBM tunnel based on BP neural network integrated simulated annealing algorithm [J].
Liu, B. ;
Wang, R. ;
Zhao, G. ;
Guo, X. ;
Wang, Y. ;
Li, J. ;
Wang, S. .
TUNNELLING AND UNDERGROUND SPACE TECHNOLOGY, 2020, 95
[17]   Improved support vector regression models for predicting rock mass parameters using tunnel boring machine driving data [J].
Liu, Bin ;
Wang, Ruirui ;
Guan, Zengda ;
Li, Jianbin ;
Xu, Zhenhao ;
Guo, Xu ;
Wang, Yaxu .
TUNNELLING AND UNDERGROUND SPACE TECHNOLOGY, 2019, 91
[18]   Smart deep learning based wind speed prediction model using wavelet packet decomposition, convolutional neural network and convolutional long short term memory network [J].
Liu, Hui ;
Mi, Xiwei ;
Li, Yanfei .
ENERGY CONVERSION AND MANAGEMENT, 2018, 166 :120-131
[19]  
Liu Q, 2016, Chinese Journal of Rock Mechanics and Engineering, V35, P2766
[20]   A support vector regression model for predicting tunnel boring machine penetration rates [J].
Mahdevari, Satar ;
Shahriar, Kourosh ;
Yagiz, Saffet ;
Shirazi, Mohsen Akbarpour .
INTERNATIONAL JOURNAL OF ROCK MECHANICS AND MINING SCIENCES, 2014, 72 :214-229