Application of soft computing techniques in tunnelling and underground excavations: state of the art and future prospects
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[1] Trevor Hastie,et al. The Elements of Statistical Learning , 2001 .
[2] Saeid Nahavandi,et al. Artificial Neural Network Analysis of Twin Tunnelling-Induced Ground Settlements , 2013, 2013 IEEE International Conference on Systems, Man, and Cybernetics.
[3] Milton S. Boyd,et al. Designing a neural network for forecasting financial and economic time series , 1996, Neurocomputing.
[4] The Institution of Mining and Metallurgy , 1956, Nature.
[5] J. Hou,et al. Prediction of surface settlements induced by shield tunneling: An ANFIS model , 2008 .
[6] Yang Xiao,et al. Determination of earth pressure balance tunnel-related maximum surface settlement: a multivariate adaptive regression splines approach , 2018, Bulletin of Engineering Geology and the Environment.
[7] Nii O. Attoh-Okine,et al. Multivariate adaptive regression (MARS) and hinged hyperplanes (HHP) for doweled pavement performance modeling , 2009 .
[8] Jamal Rostami,et al. Evaluating the Suitability of Existing Rock Mass Classification Systems for TBM Performance Prediction by using a Regression Tree , 2017 .
[9] J. Nazuno. Haykin, Simon. Neural networks: A comprehensive foundation, Prentice Hall, Inc. Segunda Edición, 1999 , 2000 .
[10] Ling Zhang,et al. RBF neural networks for the prediction of building interference effects , 2004 .
[11] Max Kuhn,et al. Applied Predictive Modeling , 2013 .
[12] Wei Guo,et al. Artificial Neural Network to Predict the Surface Maximum Settlement by Shield Tunneling , 2010, ICIRA.
[13] R. Goodman. Introduction to Rock Mechanics , 1980 .
[14] A. Soroush,et al. Effects of surface buildings on twin tunnelling-induced ground settlements , 2012 .
[15] D. Basak,et al. Support Vector Regression , 2008 .
[16] Ali Lashkari,et al. Prediction of the shaft resistance of nondisplacement piles in sand , 2013 .
[17] Kaveh Ahangari,et al. Estimation of tunnelling-induced settlement by modern intelligent methods , 2015 .
[18] Heinz Duddeck. Challenges to tunnelling engineers , 1996 .
[19] M. Karakus,et al. Back analysis for tunnelling induced ground movements and stress redistribution , 2005 .
[20] G. Swoboda,et al. Three-dimensional numerical modelling for TBM tunnelling in consolidated clay , 1999 .
[21] R. J. Fowell,et al. EFFECTS OF DIFFERENT TUNNEL FACE ADVANCE EXCAVATION ON THE SETTLEMENT BY FEM , 2003 .
[22] Holger R. Maier,et al. Future challenges for artificial neural network modelling in geotechnical engineering , 2008 .
[23] D. Potts,et al. SUBSIDENCE ABOVE SHALLOW TUNNELS IN SOFT GROUND , 1977 .
[24] Günther Meschke,et al. A numerical study of the effect of soil and grout material properties and cover depth in shield tunnelling , 2006 .
[25] M. Noorian-Bidgoli,et al. ICA-ANN, ANN and multiple regression models for prediction of surface settlement caused by tunneling , 2018, Tunnelling and Underground Space Technology.
[26] Gholamnejad Javad,et al. Application of artificial neural networks to the prediction of tunnel boring machine penetration rate , 2010 .
[27] Isam Shahrour,et al. Three‐dimensional finite element analysis of the interaction between tunneling and pile foundations , 2002 .
[28] Sing-Wu Liou,et al. Integrative Discovery of Multifaceted Sequence Patterns by Frame-Relayed Search and Hybrid PSO-ANN , 2009, J. Univers. Comput. Sci..
[29] Seyed Babak Ashrafi,et al. Application of hybrid artificial neural networks for predicting rate of penetration (ROP): A case study from Marun oil field , 2019, Journal of Petroleum Science and Engineering.
[30] Aminaton Marto,et al. Ground vibration prediction in quarry blasting through an artificial neural network optimized by imperialist competitive algorithm , 2015, Bulletin of Engineering Geology and the Environment.
[31] Satar Mahdevari,et al. Prediction of tunnel convergence using Artificial Neural Networks , 2012 .
[32] Kourosh Shahriar,et al. A support vector regression model for predicting tunnel boring machine penetration rates , 2014 .
[33] Danial Jahed Armaghani,et al. Development of hybrid intelligent models for predicting TBM penetration rate in hard rock condition , 2017 .
[34] Dimitris Kaliampakos,et al. Modelling TBM performance with artificial neural networks , 2004 .
[35] V. Maji,et al. Numerical modeling of tunneling induced ground deformation and its control , 2016 .
[36] Hongwei Huang,et al. Simplified procedure for finite element analysis of the longitudinal performance of shield tunnels considering spatial soil variability in longitudinal direction , 2015 .
[37] Jie Zhang,et al. Optimization of site exploration program for improved prediction of tunneling-induced ground settlement in clays , 2014 .
[38] E. T. Brown,et al. Underground excavations in rock , 1980 .
[39] M. R. Bazargan-Lari,et al. Prediction of maximum surface settlement caused by earth pressure balance shield tunneling using random forest , 2017 .
[40] Anthony T. C. Goh,et al. Multivariate adaptive regression splines for analysis of geotechnical engineering systems , 2013 .
[41] Abbas Abbaszadeh Shahri,et al. Optimized developed artificial neural network-based models to predict the blast-induced ground vibration , 2018, Innovative Infrastructure Solutions.
[42] Fabrice Emeriault,et al. Modeling the relationship between ground surface settlements induced by shield tunneling and the operational and geological parameters based on the hybrid PCA/ANFIS method , 2017 .
[43] K. Park. ELASTIC SOLUTION FOR TUNNELING-INDUCED GROUND MOVEMENTS IN CLAYS , 2004 .
[44] Li Wu,et al. A fuzzy model for high-speed railway tunnel convergence prediction in weak rock , 2011 .
[45] Bernhard Maidl,et al. Mechanised Shield Tunnelling , 1996 .
[46] V. Maji,et al. Numerical modelling of tunnelling induced ground deformation and its control , 2016 .
[47] Fan Wang,et al. Modeling tunneling-induced ground surface settlement development using a wavelet smooth relevance vector machine , 2013 .
[48] Haichao Zhu,et al. A New Method to Assist Small Data Set Neural Network Learning , 2006, Sixth International Conference on Intelligent Systems Design and Applications.
[49] Hamid Taghavifar,et al. A hybridized artificial neural network and imperialist competitive algorithm optimization approach for prediction of soil compaction in soil bin facility , 2013 .
[50] Hosein Rafiai,et al. An approximate ANN-based solution for convergence of lined circular tunnels in elasto-plastic rock masses with anisotropic stresses , 2012 .
[51] Brian D. Ripley,et al. Statistical aspects of neural networks , 1993 .
[52] T. Chai,et al. Root mean square error (RMSE) or mean absolute error (MAE)? – Arguments against avoiding RMSE in the literature , 2014 .
[53] M. Eftekhari,et al. Predicting Penetration Rate Of A Tunnel Boring Machine Using Artificial Neural Network , 2010 .
[54] K. M. Neaupane,et al. Prediction of tunneling-induced ground movement with the multi-layer perceptron , 2006 .
[55] Farooq Azam,et al. Biologically Inspired Modular Neural Networks , 2000 .
[56] Pijush Samui,et al. Multivariate Adaptive Regression Spline and Least Square Support Vector Machine for Prediction of Undrained Shear Strength of Clay , 2012, Int. J. Appl. Metaheuristic Comput..
[57] Ralph B. Peck,et al. Advantages and Limitations of the Observational Method in Applied Soil Mechanics , 1969 .
[58] Chao Zhang,et al. Recurrent neural networks for real-time prediction of TBM operating parameters , 2019, Automation in Construction.
[59] Amin Shokrollahi,et al. Evolving artificial neural network and imperialist competitive algorithm for prediction oil flow rate of the reservoir , 2013, Appl. Soft Comput..
[60] S. Hyakin,et al. Neural Networks: A Comprehensive Foundation , 1994 .
[61] Alexander J. Smola,et al. Support Vector Method for Function Approximation, Regression Estimation and Signal Processing , 1996, NIPS.
[62] A. N. Jiang,et al. Feedback analysis of tunnel construction using a hybrid arithmetic based on Support Vector Machine and Particle Swarm Optimisation , 2011 .
[63] P. Samui,et al. Uplift capacity of suction caisson in clay using multivariate adaptive regression spline , 2011 .
[64] J. Freidman,et al. Multivariate adaptive regression splines , 1991 .
[65] Halil Karahan,et al. Application of various optimization techniques and comparison of their performances for predicting TBM penetration rate in rock mass , 2015 .
[66] R. L. Sterling,et al. IDENTIFYING PROBABLE FAILURE MODES FOR UNDERGROUND OPENINGS USING A NEURAL NETWORK , 1992 .
[67] Saeid R. Dindarloo,et al. Maximum surface settlement based classification of shallow tunnels in soft ground , 2015 .
[68] D. Potts,et al. The influence of soil anisotropy and K0 on ground surface movements resulting from tunnel excavation , 2005 .
[69] Hao Wang,et al. Predicting tunnel convergence using Multivariate Adaptive Regression Spline and Artificial Neural Network , 2013 .
[70] Stefan Larsson,et al. An artificial neural network based model to predict spatial soil type distribution using piezocone penetration test data (CPTu) , 2018, Bulletin of Engineering Geology and the Environment.
[71] Masoud Monjezi,et al. Application of artificial intelligence algorithms in predicting tunnel convergence to avoid TBM jamming phenomenon , 2012 .
[72] M. Shcherbakov,et al. A Survey of Forecast Error Measures , 2013 .
[73] R. Fenner,et al. Untersuchungen zur Erkenntnis des Gebirgsdrucks , 1938 .
[74] Wilfrid S. Kendall,et al. Networks and Chaos - Statistical and Probabilistic Aspects , 1993 .
[75] Philipp Slusallek,et al. Introduction to real-time ray tracing , 2005, SIGGRAPH Courses.
[76] Irini Djeran-Maigre,et al. Three-dimensional numerical simulation for mechanized tunnelling in soft ground: the influence of the joint pattern , 2014 .
[77] Andy Liaw,et al. Classification and Regression by randomForest , 2007 .
[78] O. J. Santos,et al. Artificial neural networks analysis of São Paulo subway tunnel settlement data , 2008 .
[79] Sou-Sen Leu,et al. Data mining for tunnel support stability: neural network approach , 2001 .
[80] H. Einstein,et al. SIMPLIFIED ANALYSIS FOR TUNNEL SUPPORTS , 1979 .
[81] Carlos E. Pedreira,et al. Neural networks for short-term load forecasting: a review and evaluation , 2001 .
[82] Riccardo Castellanza,et al. Development and validation of a 3D numerical model for TBM–EPB mechanised excavations , 2012 .
[83] Wengang Zhang,et al. Multivariate Adaptive Regression Splines Approach to Estimate Lateral Wall Deflection Profiles Caused by Braced Excavations in Clays , 2017, Geotechnical and Geological Engineering.
[84] Jingsheng Shi,et al. MODULAR NEURAL NETWORKS FOR PREDICTING SETTLEMENTS DURING TUNNELING , 1998 .
[85] S. Suwansawat,et al. Artificial neural networks for predicting the maximum surface settlement caused by EPB shield tunneling , 2006 .
[86] Hani S. Mitri,et al. Feasibility of Random-Forest Approach for Prediction of Ground Settlements Induced by the Construction of a Shield-Driven Tunnel , 2017 .
[87] Mohammad N. Almasri,et al. Modular neural networks to predict the nitrate distribution in ground water using the on-ground nitrogen loading and recharge data , 2005, Environ. Model. Softw..
[88] James L. McClelland,et al. Parallel distributed processing: explorations in the microstructure of cognition, vol. 1: foundations , 1986 .
[89] Nitish Srivastava,et al. Dropout: a simple way to prevent neural networks from overfitting , 2014, J. Mach. Learn. Res..
[90] Giulia Viggiani,et al. Geotechnical Aspects of Underground Construction in Soft Ground , 2012 .
[91] Samuel T. Ariaratnam,et al. Applying radial basis function neural networks to estimate next-cycle production rates in tunnelling construction , 2010 .
[92] A. Fourie,et al. Back-Analysis Method for Stope Displacements Using Gradient-Boosted Regression Tree and Firefly Algorithm , 2018, J. Comput. Civ. Eng..
[93] Nikos E. Mastorakis,et al. An optimized neural network for predicting settlements during tunneling excavation , 2010 .
[94] S. W. Hong,et al. Neural network based prediction of ground surface settlements due to tunnelling , 2001 .
[95] Mohammad Ali Lotfollahi-Yaghin,et al. Wavenet ability assessment in comparison to ANN for predicting the maximum surface settlement caused by tunneling , 2012 .
[96] G. W. Clough,et al. Design and Performance of Excavations and Tunnels in Soft Clay , 1981 .
[97] B. Stack. Handbook of mining and tunnelling machinery , 1982 .