TECHNICAL PAPERS
Sep 1, 1994

Seismic Liquefaction Potential Assessed by Neural Networks

Publication: Journal of Geotechnical Engineering
Volume 120, Issue 9

Abstract

The feasibility of using neural networks to model the complex relationship between the seismic and soil parameters, and the liquefaction potential has been investigated. Neural‐networks are information‐processing systems whose architectures essentially mimic the biological system of the brain. A simple back‐propagation neural‐network algorithm was used. The neural networks were trained using actual field records. The performance of the neural‐network models improved as more input variables are provided. The model consisting of eight input variables was the most successful. These variables are: the standard penetration test (SPT) value, the fines content, the mean grain size D50, the equivalent dynamic shear stress τav/σ0, the total stress σ0, the effective stress σ0, the earthquake magnitude M, and the maximum horizontal acceleration at ground surface. The most important input parameters have been identified as the SPT and fines content of the soil. Comparisons indicate that the neural‐network model is more reliable than the conventional dynamic stress method.

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Go to Journal of Geotechnical Engineering
Journal of Geotechnical Engineering
Volume 120Issue 9September 1994
Pages: 1467 - 1480

History

Received: Aug 27, 1993
Published online: Sep 1, 1994
Published in print: Sep 1994

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Authors

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Anthony T. C. Goh
Sr. Lect., School of Civ. Engrg. and Build., Swinburne Univ. of Technol., Melbourne, Victoria, 3122, Australia

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