Meta -model-based optimization of rule-based energy management in second-hand plug-in hybrid electric vehicles
Data Science and Management,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Jan. 1, 2025
Language: Английский
Anomaly Detection in Commercial Aircraft Landing at SSK II Airport using Clustering Method
Rossi Passarella,
No information about this author
Taswiyah Marsyah Noor,
No information about this author
Osvari Arsalan
No information about this author
et al.
Aerospace traffic and safety.,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Dec. 1, 2024
Language: Английский
Classification Models for Assessing the Severity of Marine Accidents Based on Machine Learning
International Journal of Safety and Security Engineering,
Journal Year:
2024,
Volume and Issue:
14(4), P. 1213 - 1221
Published: Aug. 30, 2024
Marine
transport
is
still
famous
and
claimed
to
be
part
of
human
civilization,
but
in
practice,
marine
vessels
experience
accidents
quite
frequently,
which
can
result
large
losses.Therefore,
this
research
aims
integrate
multiple
data
sources
on
accidents,
classify
them
identify
patterns,
create
a
model
forecast
prevent
future
accidents.The
first
step
the
methodology
connect
several
variables
from
generate
target
variables.We
then
feed
ready
set
into
10
machine
learning
algorithms
determine
one
best
suit
type
quality.The
training
results
provided
four
with
performance,
namely
label
spreading,
propagation,
random
forest,
XGB
classifier
algorithms.After
comparing
testing
results,
we
found
that
performed
slightly
better
than
other
three
models,
where
developed
dataset
only
had
performance
70%-74%
predicting
corresponding
class.
Language: Английский
ANALYSIS OF TAKEOFF BEHAVIOR OF A320 AND B738 AIRCRAFT AT SULTAN HASANUDDIN INTERNATIONAL AIRPORT BASED ON UNSUPERVISED LEARNING
Published: Dec. 20, 2024
This
research
aims
to
enhance
aviation
safety
in
Indonesia
by
examining
the
impact
of
takeoff
speed
on
flight
incidents.
Specifically,
we
investigate
relationship
between
abnormal
speeds
and
runway
exit
or
other
accident
risks
for
A320
B738
aircraft
at
Sultan
Hasanuddin
International
Airport.
Employing
a
quantitative
design,
analyzed
dataset
4,550
flights
over
91
days.
Due
data
quality
constraints,
only
14%
(628
flights)
was
suitable
analysis.
The
further
divided
into
three
classes
using
elbow
method
identify
patterns
speeds.
These
included
low,
medium,
high
speeds,
allowing
us
assess
correlation
each
category
incidence
exits
accidents.
Preliminary
findings
suggest
that
with
are
significantly
associated
increased
risks,
highlighting
need
improved
monitoring
intervention
strategies
airport.
Our
will
contribute
better
understanding
factors
influencing
safety,
particularly
relation
By
identifying
potential
developing
targeted
interventions,
this
can
help
improve
standards
Indonesia.
In
addition,
collaboration
airlines,
regulatory
bodies,
airport
authorities
be
essential
implementing
these
effectively.
Future
studies
may
also
explore
weather
conditions
pilot
training
performance
measures
sector.
Language: Английский