Talent
is
the
first
resource,
development
of
enterprise
to
retain
key
talent
essential,
main
research
based
on
machine
learning
and
ontological
reasoning,
human
resources
analysis
management
risk
prediction
early
warning
methods,
all,
according
specific
situation
target
case,
through
calculation
similarity
concept
name
attribute
assessment
source
case
in
library,
matching
knowledge-based
employees
company's
for
research.Then,
evaluation
results,
we
can
find
out
most
suitable
job
matches
problems
situations.This
a
solution
cases
criteria
companies
evaluate
candidates.Second,
have
successfully
developed
implemented
model
that
applies
study
HR
management.The
optimized
with
cross-validation
function,
convergence
training
accelerated
by
regularization
Newton's
iterative
method.Finally,
our
achieved
82%
yield.Ontological
reasoning
are
promising
resource
warning,
which
proved
high
accuracy
rate
verified
examples.Finally,
analyze
proposed
results
HRM
contribute
improvement
control
suggest
measures
possible
risks.
Water,
Journal Year:
2023,
Volume and Issue:
15(4), P. 620 - 620
Published: Feb. 5, 2023
In
accordance
with
the
rapid
proliferation
of
machine
learning
(ML)
and
data
management,
ML
applications
have
evolved
to
encompass
all
engineering
disciplines.
Owing
importance
world’s
water
supply
throughout
rest
this
century,
much
research
has
been
concentrated
on
application
strategies
integrated
resources
management
(WRM).
Thus,
a
thorough
well-organized
review
that
is
required.
To
accommodate
underlying
knowledge
interests
both
artificial
intelligence
(AI)
unresolved
issues
in
WRM,
overview
divides
core
fundamentals,
major
applications,
ongoing
into
two
sections.
First,
basic
are
categorized
three
main
groups,
prediction,
clustering,
reinforcement
learning.
Moreover,
literature
organized
each
field
according
new
perspectives,
patterns
indicated
so
attention
can
be
directed
toward
where
headed.
second
part,
less
investigated
WRM
addressed
provide
grounds
for
future
studies.
The
widespread
tools
projected
accelerate
formation
sustainable
plans
over
next
decade.
Energy Conversion and Management,
Journal Year:
2023,
Volume and Issue:
291, P. 117264 - 117264
Published: June 17, 2023
The
application
of
energy-efficient
strategies
in
buildings,
such
as
the
Green
Building
Concept,
can
significantly
impact
human
comfort
and
resource
consumption.
However,
due
to
complexity
decision-making
factors
variety
available
materials,
computational
models
are
necessary
identify
most
effective
solutions
optimise
building
energy
performance.
This
study
presents
an
integrated
framework
that
uses
machine
learning
algorithms
a
Petri
Net
control
system
thermal,
comfort,
efficiency
both
vertical
horizontal
envelopes
semi-arid
climate
zones.
incorporates
several
passive
techniques
for
parameters,
including
material
thickness
melting
point,
window
types,
wall
insulation
thermal
emissivity,
solar
absorbance,
ratio,
fenestration
position,
air
tightness,
roof
reflectance,
conductivity
(W/(m·°C)),
floor
thickness.
An
experiment
design
was
developed
using
Box-Behnken
Design-Response
Surface
Methodology
(BBD-RSM)
statistical
optimisation,
which
coupled
with
Design
Builder
simulation
model.
methodology
demonstrated
by
applying
it
residential
Mexico.
Meta
Additive
Regression
used
analyse
output
factors,
showed
higher
confidence
compared
REP
Tree
M5P
green
buildings.
results
demonstrate
annual
reduction
50
kW/m2
per
household
be
achieved
optimised
envelope.
Water Resources Management,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Jan. 14, 2025
Abstract
Among
natural
hazards,
floods
pose
the
greatest
threat
to
lives
and
livelihoods.
To
reduce
flood
impacts,
short-term
forecasting
can
contribute
early
warnings
that
provide
communities
with
time
react.
This
manuscript
explores
how
machine
learning
(ML)
support
forecasting.
Using
two
methods
[strengths,
weaknesses,
opportunities,
threats
(SWOT)
comparative
performance
analysis]
for
different
forecast
lead
times
(1–6,
6–12,
12–24,
24–48
h),
we
evaluate
of
models
in
94
journal
papers
from
2001
2023.
SWOT
reveals
best
was
produced
by
hybrid,
random
forest
(RF),
long
memory
(LSTM),
artificial
neural
network
(ANN),
adaptive
neuro-fuzzy
inference
system
(ANFIS)
approaches.
The
analysis,
meanwhile,
favors
convolutional
network,
ANFIS,
multilayer
perceptron,
k-nearest
neighbors
algorithm
(KNN),
LSTM,
ANN,
vector
(SVM)
at
1–6
h;
LSTM
6–12
SVM,
RF
12–24
hybrid
h.
In
general,
approaches
consistently
perform
well
across
all
times.
Trends
such
as
hybridization,
model
selection,
input
data
decomposition
seem
improve
accuracy
models.
Furthermore,
effective
stand-alone
ML
RF,
genetic
algorithm,
KNN,
better
outcomes
through
hybridization
other
By
including
parameters
environmental,
socio-economical,
climatic
parameters,
produce
more
accurate
forecasting,
making
it
warning
operational
purposes.
Ecological Indicators,
Journal Year:
2023,
Volume and Issue:
153, P. 110457 - 110457
Published: June 15, 2023
This
paper
presents
a
novel
framework
for
smart
integrated
risk
management
in
arid
regions.
The
combines
flash
flood
modelling,
statistical
methods,
artificial
intelligence
(AI),
geographic
evaluations,
analysis,
and
decision-making
modules
to
enhance
community
resilience.
Flash
is
simulated
by
using
Watershed
Modelling
System
(WMS).
Statistical
methods
are
also
used
trim
outlier
data
from
physical
systems
climatic
data.
Furthermore,
three
AI
including
Support
Vector
Machine
(SVM),
Artificial
Neural
Network
(ANN),
Nearest
Neighbours
Classification
(NNC),
predict
classify
occurrences.
Geographic
Information
(GIS)
utilised
assess
potential
risks
vulnerable
regions,
together
with
Failure
Mode
Effects
Analysis
(FMEA)
Hazard
Operability
Study
(HAZOP)
methods.
module
employs
the
Classic
Delphi
technique
appropriate
solutions
control.
methodology
demonstrated
its
application
real
case
study
of
Khosf
region
Iran,
which
suffers
both
drought
severe
floods
simultaneously,
exacerbated
recent
climate
changes.
results
show
high
Coefficient
determination
(R2)
scores
SVM
at
0.88,
ANN
0.79,
NNC
0.89.
FMEA
indicate
that
over
50%
scenarios
risk,
while
HAZOP
indicates
30%
same
rate.
Additionally,
peak
flows
24
m3/s
considered
occurrences
can
cause
financial
damage
all
techniques
study.
Finally,
our
research
findings
practical
decision
support
system
compatible
sustainable
development
concepts
resilience
Sustainability,
Journal Year:
2024,
Volume and Issue:
16(4), P. 1592 - 1592
Published: Feb. 14, 2024
Developing
a
sustainable
water
infrastructure
entails
the
planning
and
management
of
systems
to
ensure
availability,
access,
quality,
affordability
resources
in
face
social,
environmental,
economic
challenges.
Sub-Saharan
Africa
(SSA)
is
currently
an
era
where
it
must
make
significant
changes
improve
sustainability
its
infrastructure.
This
paper
reviews
factors
affecting
interventions
taken
globally
address
these
In
parallel,
reflects
on
relevance
context
through
lens
STEEP
(societal,
technological,
economic,
political)
framework.
The
goes
recommend
extended
analysis
that
captures
additional
critical
dimensions
when
applying
concept
sustainability.
Furthermore,
this
sheds
light
practice
development
fosters
deeper
understanding
issues,
thereby
forming
basis
for
further
research
resilient
solutions
asset
more
generally.