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Title:

ESTIMATION OF DYNAMIC PROPERTIES OF SAND USING ARTIFICIAL NEURAL NETWORKS

Accession Number:

00730310

Record Type:

Component

Availability:

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Order URL: http://worldcat.org/isbn/0309062209

Abstract:

Dynamic properties of soils are usually determined by time-consuming laboratory tests. This study presents a method for estimating dynamic soil parameters using artificial neural networks. A simple feedforward neural network with back-propagation training algorithm is used. The neural network is trained with actual laboratory data, which consists of six input variables. They are the standard penetration test value, the void ratio, the unit weight, the water content, the effective overburden pressure, and the mean effective confining pressure. The output layer consists of a single neuron, representing shear modulus or damping ratio. Results of the neural network training and testing show that predictions of shear modulus by the neural network approach is reliable although it is less successful in predicting damping ratio.

Supplemental Notes:

This paper appears in Transportation Research Record No. 1526, Emerging Technologies in Geotechnical Engineering.

Language:

English

Corporate Authors:

Transportation Research Board

500 Fifth Street, NW
Washington, DC 20001 United States

Authors:

Ni, S H
Juang, C H
Lu, P C

Pagination:

p. 1-5

Publication Date:

1996

Serial:

Transportation Research Record

Issue Number: 1526
Publisher: Transportation Research Board
ISSN: 0361-1981

ISBN:

0309062209

Features:

Figures (8) ; References (12) ; Tables (3)

Uncontrolled Terms:

Old TRIS Terms:

Subject Areas:

Geotechnology; Highways; I42: Soil Mechanics

Files:

TRIS, TRB

Created Date:

Dec 26 1997 12:00AM

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