Prediction of rock mass classification in tunnel boring machine tunneling using the principal component analysis(PCA)–gated recurrent unit(GRU) neural network

被引:0
|
作者
Ke Man [1 ,2 ]
Liwen Wu [1 ]
Xiaoli Liu [3 ]
Zhifei Song [1 ]
Kena Li [1 ]
Nawnit Kumar [3 ]
机构
[1] College of Civil Engineering, North China University of Technology
[2] Guangdong Provincial Key Laboratory of Deep Earth Sciences and Geothermal Energy Exploitation and Utilization, Shenzhen University
[3] State Key Laboratory of Hydroscience and Engineering, Tsinghua
关键词
D O I
暂无
中图分类号
U455.31 [];
学科分类号
摘要
Due to the complexity of underground engineering geology, the tunnel boring machine(TBM) usually shows poor adaptability to the surrounding rock mass,leading to machine jamming and geological hazards. For the TBM project of Lanzhou Water Source Construction, this study proposed a neural network called PCA–GRU, which combines principal component analysis(PCA) with gated recurrent unit(GRU) to improve the accuracy of predicting rock mass classification in TBM tunneling. The input variables from the PCA dimension reduction of nine parameters in the sample data set were utilized for establishing the PCA–GRU model. Subsequently, in order to speed up the response time of surrounding rock mass classification predictions, the PCA–GRU model was optimized. Finally, the prediction results obtained by the PCA–GRU model were compared with those of four other models and further examined using random sampling analysis. As indicated by the results, the PCA–GRU model can predict the rock mass classification in TBM tunneling rapidly, requiring about 20 s to run. It performs better than the previous four models in predicting the rock mass classification, with accuracy A, macro precision MP, and macro recall MR being 0.9667, 0.963, and0.9763, respectively. In Class Ⅱ, Ⅲ, and IV rock mass prediction, the PCA–GRU model demonstrates better precision P and recall R owing to the dimension reduction technique. The random sampling analysis indicates that the PCA–GRU model shows stronger generalization, making it more appropriate in situations where the distribution of various rock mass classes and lithologies change in percentage.
引用
收藏
页码:413 / 425
页数:13
相关论文
共 50 条
  • [41] EEG Signal Classification using Principal Component Analysis with Neural Network in Brain Computer Interface Applications
    Kottaimalai, R.
    Rajasekaran, Pallikonda M.
    Selvam, V
    Kannapiran, B.
    2013 IEEE INTERNATIONAL CONFERENCE ON EMERGING TRENDS IN COMPUTING, COMMUNICATION AND NANOTECHNOLOGY (ICE-CCN'13), 2013, : 227 - 231
  • [42] FUZZY CLASSIFICATION OF GEAR FAULT USING PRINCIPAL COMPONENT ANALYSIS-BASED FUZZY NEURAL NETWORK
    Zhou, Kai
    Tang, J.
    PROCEEDINGS OF THE 2020 INTERNATIONAL SYMPOSIUM ON FLEXIBLE AUTOMATION (ISFA2020), 2020,
  • [43] Classification of EEG based-Mental Fatigue using Principal Component Analysis and Bayesian Neural Network
    Chai, Rifai
    Tran, Yvonne
    Naik, Ganesh R.
    Nguyen, Tuan N.
    Ling, Sai Ho
    Craig, Ashley
    Nguyen, Hung T.
    2016 38TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY (EMBC), 2016, : 4654 - 4657
  • [44] Electroencephalography based human emotion state classification using principal component analysis and artificial neural network
    Kanuboyina, V. Satyanarayana Naga
    Shankar, T.
    Penmetsa, Rama Raju Venkata
    MULTIAGENT AND GRID SYSTEMS, 2022, 18 (3-4) : 263 - 278
  • [45] Principal Component Analysis and Prediction of Students' Physical Health Standard Test Results Based on Recurrent Convolution Neural Network
    Hou, Kai
    WIRELESS COMMUNICATIONS & MOBILE COMPUTING, 2021, 2021
  • [46] Evaluation of Flow–Volume Spirometric Test Using Neural Network Based Prediction and Principal Component Analysis
    Anandan Kavitha
    Manoharan Sujatha
    Swaminathan Ramakrishnan
    Journal of Medical Systems, 2011, 35 : 127 - 133
  • [47] Determination of key canopy parameters for mass mechanical apple harvesting using supervised machine learning and principal component analysis (PCA)
    Zhang, Xin
    He, Long
    Zhang, Jing
    Whiting, Matthew D.
    Karkee, Manoj
    Zhang, Qin
    BIOSYSTEMS ENGINEERING, 2020, 193 : 247 - 263
  • [48] Prediction of compressive strength of concrete using multilayer perception network, generalized feedforward network, principal component analysis network, time lagged recurrent network, recurrent network
    Sudhanshu S Pathak
    Sachin J Mane
    Gaurang R Vesmawala
    Sandeep S Sarnobat
    Asian Journal of Civil Engineering, 2025, 26 (1) : 431 - 450
  • [49] Path Loss Prediction Based on Machine Learning Techniques: Principal Component Analysis, Artificial Neural Network, and Gaussian Process
    Jo, Han-Shin
    Park, Chanshin
    Lee, Eunhyoung
    Choi, Haing Kun
    Park, Jaedon
    SENSORS, 2020, 20 (07)
  • [50] Investigation of correlation between chemical composition and properties of biodiesel using principal component analysis (PCA) and artificial neural network (ANN)
    Jahirul, M., I
    Rasul, M. G.
    Brown, R. J.
    Senadeera, W.
    Hosen, M. A.
    Haque, R.
    Saha, S. C.
    Mahlia, T. M., I
    RENEWABLE ENERGY, 2021, 168 : 632 - 646