- 1. Seed, H.B.J.E.e.r.i., "Ground motions and soil liquefaction during earthquakes", Earthquake engineering research insititue, Vol. 5, pp. 1249-1273, (1982).
- 2. Xue, X. and Yang, X.J.N.h., "Application of the adaptive neuro-fuzzy inference system for prediction of soil liquefaction", Natural hazards, Vol. 67, pp. 901-917, (2013).
- 3. Seed, H.B. and Idriss, I.M., "Simplified procedure for evaluating soil liquefaction potential" Journal of the Soil Mechanics and Foundations division, Vol. 97, pp. 1249-1273, (1971).
- 4. Kiang, M.Y.J.D.s.s., "A comparative assessment of classification methods", Decision support systems, Vol. 35, pp. 441-454, (2003).
- 5. Ramakrishnan, D., et al., "Artificial neural network and liquefaction susceptibility assessment: a case study using the 2001 Bhuj earthquake data, Gujarat, India", Computational Geosciences, 12, pp. 491-501, (2008).
- 6. Chern, S.-G., Lee, C.-Y.J.J.o.M.S., and Technology, "CPT-based simplified liquefaction assessment by using fuzzy-neural network", Journal of Marine Science and Technology, 17, pp. 326-331, (2009).
- 7. Mughieda, O., Bani-Hani, K., and Safieh, B.J.I.J.o.G.E., "Liquefaction assessment by artificial neural networks based on CPT", International Journal of Geotechnical Engineering, Vol. 3, pp. 289-302, (2009).
- 8. Sulewska, M.J.J.C.A.M.i.E. and Science, "Applying artificial neural networks for analysis of geotechnical problems", Computer Assisted Methods in Engineering and Science, Vol. 18, pp. 231-241, (2017).
- 9. Samui, P., Sitharam, T.J.N.H., and Sciences, E.S., "Machine learning modelling for predicting soil liquefaction susceptibility", Natural Hazards and Earth System Sciences, Vol. 11, pp. 1-9, (2011).
- 10. Farrokhzad, F., Choobbasti, A., and Barari, A.J.J.o.K.S.U.-S., "Liquefaction microzonation of Babol city using artificial neural network", Journal of King Saud University, Vol. 24, pp. 89-100, (2012).
- 11. Tolon, M.J.I.J.H.S., "A comparative study on computer aided liquefaction analysis methods", Journal for Housing Science, Vol. 37, pp. 121-35, (2013).
- 12. Muduli, P.K. and Das, S.K.J.I.G.J., "CPT-based seismic liquefaction potential evaluation using multi-gene genetic programming approach", Indian Geotechnical Journal, Vol. 44, pp. 86-93, (2014).
13 .Bre, F., et al., "Prediction of wind pressure coefficients on building surfaces using artificial neural networks", Energy and Buildings, Vol. 158, pp. 1429-1441, (2018).
- 14. Mashrei, M.A.J.F.I.S.-T., "Neural network and adaptive neuro-fuzzy inference system applied to civil engineering problems", Fuzzy Inference System-Theory and Applications, Vol., (2012).
- 15. Noble, W.S.J.N.b., "What is a support vector machine?", Nature biotechnology, Vol. 24, pp. 1565-1567, (2006).
- 16. Wu, X. and Kumar, V., "The top ten algorithms in data mining". CRC pres, (2009.(
- 17. Wright, R.E., "Logistic regression", American Psychological Association, Vol., (1995).
- 18. Breiman, L.J.M.l., "Random forests", Machine learning, Vol. 45, pp. 5-32, (2001).
- 19. Raileanu, L.E., Stoffel, K.J.A.o.M., and Intelligence, A., "Theoretical comparison between the gini index and information gain criteria", Annals of Mathematics and Artificial Intelligence, Vol. 41, pp. 77-93, (2004).
- 20. Kira, K. and Rendell, L.A. The feature selection problem: Traditional methods and a new algorithm. in Aaai. 1992.
- 21. Xue, X., Yang, X.J.B.o.E.G., and Environment, t., "Seismic liquefaction potential assessed by support vector machines approaches", Bulletin of Engineering Geology and the Environment, Vol. 75, pp. 153-162, (2016).
Send comment about this article