The use of the cone-penetration-test (CPT) resistance data as a field
index for evaluating the liquefaction potential of sands is receiving
increased attention because of the popularity of this in situ test met
hod for the site characterization. This paper examines the feasibility
of using neural networks to assess liquefaction potential from actual
CPT field data. A back-propagation neural-network algorithm was used
to model actual field-liquefaction records. The study indicated that n
eural networks can successfully model the complex relationship between
seismic parameters, soil parameters, and the liquefaction potential.
The neural-network model is simpler than and as reliable as the conven
tional method of evaluating liquefaction potential. No calibration or
normalization of the cone resistance q(c) is required, unlike with the
conventional method. As additional field case records become availabl
e, these data can be readily included in the neural-network training a
nd testing data for further improvements of modeling of liquefaction p
otential.