Applied Sciences,
Journal Year:
2025,
Volume and Issue:
15(7), P. 3618 - 3618
Published: March 26, 2025
The
identification
of
the
most
pertinent
site
parameters
to
classify
soils
in
terms
their
amplification
seismic
ground
motions
is
still
prime
interest
earthquake
engineering
and
codes.
This
study
investigates
many
options
for
improving
soil
classifications
order
reduce
deviation
between
“exact”
predictions
using
wave
propagation
method
used
codes
based
on
(site)
factors.
To
this
end,
an
exhaustive
parametric
carried
out
obtain
nonlinear
responses
sets
324
clay
sand
columns
constitute
database
neuronal
network
methods
predict
regression
equations
factors
parameters.
A
wide
variety
combinations
are
considered
study,
namely,
depth,
shear
velocity,
stiffness
underlaying
bedrock,
intensity
frequency
content
excitation.
AFs
profiles
under
multiple
records
with
different
intensities
contents
obtained
by
propagation,
where
nonlinearity
accounted
through
equivalent
linear
model
iterative
procedure.
Then,
a
Generalized
Regression
Neural
Network
(GRNN)
determine
significant
affecting
AFs.
second
neural
network,
Radial
Basis
Function
(RBF)
develop
simple
practical
prediction
equations.
Both
whole
period
range
specific
short-,
mid-,
long-period
ranges
associated
AFs,
Fa,
Fv,
Fl,
respectively,
considered.
results
indicate
that
factor
arbitrary
profile
can
be
satisfactorily
approximated
limited
number
sites
record
(two
six).
best
parameter
pair
(PGA;
resonance
frequency,
f0),
which
leads
standard
reduction
at
least
65%.
For
improved
performance,
we
propose
triplet
PGA;Vs30;f0
Vs30
being
average
velocity
within
upper
30
m
below
foundation.
Most
other
relevant
include
fact
long
periods
(Fl)
significantly
higher
than
those
short
or
mid
soft
soils.
Finally,
it
recommended
further
refine
including
additional
such
as
spatial
configuration
adopting
more
refined
models.
Applied Sciences,
Journal Year:
2024,
Volume and Issue:
14(5), P. 1720 - 1720
Published: Feb. 20, 2024
With
the
advent
of
era
big
data
and
information
technology,
deep
learning
(DL)
has
become
a
hot
trend
in
research
field
artificial
intelligence
(AI).
The
use
methods
for
parameter
inversion,
disease
identification,
detection,
surrounding
rock
classification,
disaster
prediction,
other
tunnel
engineering
problems
also
new
recent
years,
both
domestically
internationally.
This
paper
briefly
introduces
development
process
learning.
By
reviewing
number
published
papers
on
application
over
past
20
this
discusses
intelligent
algorithms
engineering,
including
collapse
risk
assessment,
water
inrush
crack
structural
stability
evaluation,
seepage
erosion
mountain
tunnels,
urban
subway
subsea
tunnels.
Finally,
it
explores
future
challenges
prospects
engineering.