Evaluation of liquefaction potential of soil deposits using artificial neural networks

Author:

Hanna Adel M.,Ural Derin,Saygili Gokhan

Abstract

PurposeIn the literature, several empirical methods can be found to predict the occurrence of nonlinear soil liquefaction in soil layers. These methods are limited to the seismic conditions and the parameters used in developing the model. This paper seeks to present General Regression Neural Network (GRNN) model that addresses the collective knowledge built in simplified procedure.Design/methodology/approachThe GRNN model incorporates the soil and seismic parameters of the region. It was developed in four phases; identification, collection, implementation, and verification. The data used consisted of 3,895 case records, mostly from the cone penetration test (CPT) results produced from the two major earthquakes that took place in Turkey and Taiwan in 1999. The case records were divided randomly into training, testing and validation datasets. Soil liquefaction decision in terms of seismic demand and seismic capacity is determined by the stress‐based method and strain‐based method, and further tested with the well‐known Chinese criteria.FindingsThe results produced by the proposed GRNN model explore effectively the complex relationship between the soil and seismic input parameters and further forecast the liquefaction potential with an overall success ratio of 94 percent. Liquefaction decisions were further validated by the SPT, confirming the viability of the SPT‐to‐CPT data conversion, which is the main limitation of most of the simplified methods.Originality/valueThe proposed GRNN model provides a viable tool to geotechnical engineers to predict seismic condition in sites susceptible to liquefaction. The model can be constantly updated when new data are available, which will improve its predictability.

Publisher

Emerald

Subject

Computational Theory and Mathematics,Computer Science Applications,General Engineering,Software

Reference33 articles.

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2. Barai, S. and Agarwal, G. (2002), “Studies on instance based learning models for liquefaction potential assessment”, Electronic J. Geotech. Engng, available at: www.ejge.com/2002/Ppr0235/Ppr0235.htm.

3. Boulanger, R.W. (2003), “High overburden stress effects in liquefaction analyses”, Journal of Geotechnical and Geoenvironmental Engineering, ASCE, Vol. 129 No. 12, pp. 1071‐82.

4. Dobry, R., Stokoe, K.H., Ladd, R.S. and Yound, T.L. (1981), “Liquefaction susceptibility from S wave velocity”, ASCE National Convention, St Louis, Missouri, October 26‐31, preprint 81‐544.

5. Dobry, R., Ladd, R.S., Yokel, F.Y., Chung, R.M. and Powell, D. (1982), “Prediction of pore water pressure buildup and liquefaction of sands during earthquakes by the cyclic strain method”, NBS Building Science Series 138, U.S. Dept. of Commerce, Washington, DC, p. 152.

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