Machines,
Journal Year:
2022,
Volume and Issue:
10(11), P. 1101 - 1101
Published: Nov. 21, 2022
Automated
driving
is
a
promising
tool
for
reducing
traffic
accidents.
While
some
companies
claim
that
many
cutting-edge
automated
functions
have
been
developed,
how
to
evaluate
the
safety
of
vehicles
remains
an
open
question,
which
has
become
crucial
bottleneck.
Scenario-based
testing
introduced
test
vehicles,
and
much
progress
achieved.
data-driven
knowledge-based
approaches
are
hot
research
topics,
this
survey
mainly
about
Data-Driven
Scenario
Generation
(DDSG)
vehicle
testing.
Rather
than
describe
contributions
every
study
respectively,
in
survey,
methodologies
from
various
studies
anatomized
as
solutions
several
significant
problems
compared
with
each
other.
This
way,
scholars
engineers
can
quickly
find
state-of-the-art
issues
they
might
encounter.
Furthermore,
critical
challenges
hinder
DDSG
described,
responding
presented
at
end
survey.
npj Computational Materials,
Journal Year:
2023,
Volume and Issue:
9(1)
Published: March 25, 2023
Abstract
This
review
discussed
the
dilemma
of
small
data
faced
by
materials
machine
learning.
First,
we
analyzed
limitations
brought
data.
Then,
workflow
learning
has
been
introduced.
Next,
methods
dealing
with
were
introduced,
including
extraction
from
publications,
database
construction,
high-throughput
computations
and
experiments
source
level;
modeling
algorithms
for
imbalanced
algorithm
active
transfer
strategy
level.
Finally,
future
directions
in
science
proposed.
Advanced Functional Materials,
Journal Year:
2023,
Volume and Issue:
33(17)
Published: Feb. 15, 2023
Abstract
Data‐driven
epoch,
the
development
of
machine
learning
(ML)
in
materials
and
device
design
is
an
irreversible
trend.
Its
ability
efficiency
to
handle
nonlinear
game‐playing
problems
unmatched
by
traditional
simulation
computing
software
trial‐error
experiments.
Perovskite
solar
cells
are
complex
physicochemical
devices
(systems)
that
consist
perovskite
materials,
transport
layer
electrodes.
Predicting
properties
screening
component
related
strong
point
ML.
However,
applications
ML
has
only
begun
boom
last
two
years,
so
it
necessary
provide
a
review
involved
technologies,
application
status,
facing
urgent
challenges
blueprint.
IEEE Transactions on Intelligent Transportation Systems,
Journal Year:
2023,
Volume and Issue:
24(6), P. 6053 - 6064
Published: March 16, 2023
Health
monitor
of
bogie-bearing
on
the
train
can
ensure
constant
operation
rail
transit
system.
Since
metro
or
other
have
high
safety
requirements,
it
is
hard
to
acquire
numerous
fault
samples.
Besides,
diagnosing
bogie-bearings
under
variable
working
conditions
challenging
due
wheel-rail
coupling,
speed
variation,
and
load
fluctuation.
An
intelligent
approach
for
diagnosis
proposed
deal
with
above
problems.
A
third-order
tensor
model
established
be
suitable
conditions.
Furthermore,
a
density-based
affinity
propagation
(DAP-Tensor)
clustering
algorithm
presented
identify
different
failures
unlabeled.
Train
bogie
public
data
sets
were
employed
simulate
three
probable
operation:
high-frequency
impact,
change.
Compared
existing
methods
in
cases,
DAP-Tensor
performs
better
identifying
bearing
faults
Moreover,
The
DAP-tensor
has
comparable
recognition
rate
some
deep
learning
methods,
which
unsupervised
characteristics
show
potential
applications
trains.
ACS Nano,
Journal Year:
2023,
Volume and Issue:
17(5), P. 4551 - 4563
Published: March 3, 2023
Antibiotic-resistant
ESKAPE
pathogens
cause
nosocomial
infections
that
lead
to
huge
morbidity
and
mortality
worldwide.
Rapid
identification
of
antibiotic
resistance
is
vital
for
the
prevention
control
infections.
However,
current
techniques
like
genotype
susceptibility
testing
are
generally
time-consuming
require
large-scale
equipment.
Herein,
we
develop
a
rapid,
facile,
sensitive
technique
determine
phenotype
among
through
plasmonic
nanosensors
machine
learning.
Key
this
sensor
array
contains
gold
nanoparticles
functionalized
with
peptides
differing
in
hydrophobicity
surface
charge.
The
can
interact
generate
bacterial
fingerprints
alter
plasmon
resonance
(SPR)
spectra
nanoparticles.
In
combination
learning,
it
enables
12
less
than
20
min
an
overall
accuracy
89.74%.
This
machine-learning-based
approach
allows
antibiotic-resistant
from
patients
holds
great
promise
as
clinical
tool
biomedical
diagnosis.
Information Fusion,
Journal Year:
2024,
Volume and Issue:
108, P. 102369 - 102369
Published: March 22, 2024
Wildfires
have
emerged
as
one
of
the
most
destructive
natural
disasters
worldwide,
causing
catastrophic
losses.
These
losses
underscored
urgent
need
to
improve
public
knowledge
and
advance
existing
techniques
in
wildfire
management.
Recently,
use
Artificial
Intelligence
(AI)
wildfires,
propelled
by
integration
Unmanned
Aerial
Vehicles
(UAVs)
deep
learning
models,
has
created
an
unprecedented
momentum
implement
develop
more
effective
Although
survey
papers
explored
learning-based
approaches
wildfire,
drone
disaster
management,
risk
assessment,
a
comprehensive
review
emphasizing
application
AI-enabled
UAV
systems
investigating
role
methods
throughout
overall
workflow
multi-stage
including
pre-fire
(e.g.,
vision-based
vegetation
fuel
measurement),
active-fire
fire
growth
modeling),
post-fire
tasks
evacuation
planning)
is
notably
lacking.
This
synthesizes
integrates
state-of-the-science
reviews
research
at
nexus
observations
modeling,
AI,
UAVs
-
topics
forefront
advances
elucidating
AI
performing
monitoring
actuation
from
pre-fire,
through
stage,
To
this
aim,
we
provide
extensive
analysis
remote
sensing
with
particular
focus
on
advancements,
device
specifications,
sensor
technologies
relevant
We
also
examine
management
approaches,
monitoring,
prevention
strategies,
well
planning,
damage
operation
strategies.
Additionally,
summarize
wide
range
computer
vision
emphasis
Machine
Learning
(ML),
Reinforcement
(RL),
Deep
(DL)
algorithms
for
classification,
segmentation,
detection,
tasks.
Ultimately,
underscore
substantial
advancement
modeling
cutting-edge
UAV-based
data,
providing
novel
insights
enhanced
predictive
capabilities
understand
dynamic
behavior.
Journal of the American Ceramic Society,
Journal Year:
2024,
Volume and Issue:
108(1)
Published: Sept. 20, 2024
Abstract
Surface
ablation
temperature
and
linear
rate
are
two
crucial
indicators
for
ceramic
coatings
under
ultrahigh
temperatures
service,
yet
the
results
collection
of
such
in
process
is
difficult
due
to
long‐period
material
preparation
high‐cost
test.
In
this
work,
four
kinds
machine
learning
models
applied
predict
above
indicators.
The
Random
Forest
(RF)
model
exhibits
a
high
accuracy
87%
predicting
surface
temperature,
while
low
60%
rate.
To
optimize
model,
novel
features
constructed
based
on
original
by
sum
importance
weights
model.
Thereafter,
newly
increases
significantly,
optimized
RF
improved
11%,
exceeding
70%
accuracy.
By
validation
with
available
data
experiments,
demonstrates
precise
predictions
target
variables.