Journal of Mathematics,
Год журнала:
2025,
Номер
2025(1)
Опубликована: Янв. 1, 2025
Gradient‐Based
Optimizer
(GBO)
is
a
highly
mathematics‐based
metaheuristic
algorithm
that
has
garnered
significant
attention
since
its
introduction.
It
offers
several
inherent
advantages,
such
as
low
computational
complexity,
rapid
convergence,
and
easy
implementation.
However,
GBO
some
drawbacks,
including
lack
of
population
diversity
tendency
to
get
trapped
in
local
optima.
To
address
these
shortcomings,
this
research
introduces
an
improved
version
(iGBO).
In
iGBO,
introducing
the
Sobol
sequence
strategy
ensures
higher‐quality
initial
enhances
convergence
speed.
Additionally,
new
modified
Local
Escaping
Operator
(LEO)
proposed,
which
incorporates
sine‐cosine
operator
DCS/Xbest/Current‐to‐2rand
strategy.
This
LEO
improves
optimization
efficiency
boosts
search
capability,
helping
avoid
The
superiority
iGBO
thoroughly
verified
through
comparisons
with
original
well‐known
newly
developed
algorithms
on
IEEE
CEC’2022
benchmark
suite.
Furthermore,
proposed
approach
applied
extract
photovoltaic
system’s
global
maximum
power
point
(MPP)
under
shading
conditions.
Three
different
patterns
are
considered
assess
reliability
iGBO.
performance
compared
leading
algorithms,
Particle
Swarm
Optimization
(PSO),
Reptile
Search
Algorithm
(RSA),
Black
Widow
(BWOA),
Pelican
OA
(POA),
Chimp
(ChOA),
Osprey
(OOA),
GBO.
results
reveal
iGBO‐based
MPPT
consistently
outperforms
competitors
identifying
MPP
various
conditions
followed
by
PSO,
while
RSA
performs
least
effectively.
Scientific Reports,
Год журнала:
2025,
Номер
15(1)
Опубликована: Янв. 28, 2025
Internet
of
Things
(IoT)
is
one
the
most
important
emerging
technologies
that
supports
Metaverse
integrating
process,
by
enabling
smooth
data
transfer
among
physical
and
virtual
domains.
Integrating
sensor
devices,
wearables,
smart
gadgets
into
environment
enables
IoT
to
deepen
interactions
enhance
immersion,
both
crucial
for
a
completely
integrated,
data-driven
Metaverse.
Nevertheless,
because
devices
are
often
built
with
minimal
hardware
connected
Internet,
they
highly
susceptible
different
types
cyberattacks,
presenting
significant
security
problem
maintaining
secure
infrastructure.
Conventional
techniques
have
difficulty
countering
these
evolving
threats,
highlighting
need
adaptive
solutions
powered
artificial
intelligence
(AI).
This
work
seeks
improve
trust
in
edge
integrated
study
revolves
around
hybrid
framework
combines
convolutional
neural
networks
(CNN)
machine
learning
(ML)
classifying
models,
like
categorical
boosting
(CatBoost)
light
gradient-boosting
(LightGBM),
further
optimized
through
metaheuristics
optimizers
leveraged
performance.
A
two-leveled
architecture
was
designed
manage
intricate
data,
detection
classification
attacks
within
networks.
thorough
analysis
utilizing
real-world
network
dataset
validates
proposed
architecture's
efficacy
identification
specific
variants
malevolent
assaults,
classic
multi-class
challenge.
Three
experiments
were
executed
open
public,
where
top
models
attained
supreme
accuracy
99.83%
classification.
Additionally,
explainable
AI
methods
offered
valuable
supplementary
insights
model's
decision-making
supporting
future
collection
efforts
enhancing
systems.
Metaheuristic
optimization
algorithms
are
known
for
their
versatility
and
adaptability,
making
them
effective
tools
solving
a
wide
range
of
complex
problems.
They
don't
rely
on
specific
problem
types,
gradients,
can
explore
globally
while
handling
multi-objective
optimization.
strike
balance
between
exploration
exploitation,
contributing
to
advancements
in
However,
it's
important
note
limitations,
including
the
lack
guaranteed
global
optimum,
varying
convergence
rates,
somewhat
opaque
functioning.
In
contrast,
metaphor-based
algorithms,
intuitively
appealing,
have
faced
controversy
due
potential
oversimplification
unrealistic
expectations.
Despite
these
considerations,
metaheuristic
continue
be
widely
used
tackling
This
research
paper
aims
fundamental
components
concepts
that
underlie
focusing
use
search
references
delicate
exploitation.
Visual
representations
behavior
selected
will
also
provided.
Neural Computing and Applications,
Год журнала:
2024,
Номер
36(18), С. 10613 - 10635
Опубликована: Март 27, 2024
Abstract
This
article
proposes
the
use
of
a
leader
white
shark
optimizer
(LWSO)
with
aim
improving
exploitation
conventional
(WSO)
and
solving
economic
operation-based
load
dispatch
(ELD)
problem.
The
ELD
problem
is
crucial
aspect
power
system
operation,
involving
allocation
generation
resources
to
meet
demand
while
minimizing
operational
costs.
proposed
approach
aims
enhance
performance
efficiency
WSO
by
introducing
leadership
mechanism
within
optimization
process,
which
aids
in
more
effectively
navigating
complex
solution
space.
LWSO
achieves
increased
utilizing
leader-based
mutation
selection
throughout
each
sharks.
efficacy
algorithm
tested
on
13
engineer
benchmarks
non-convex
problems
from
CEC
2020
compared
recent
metaheuristic
algorithms
such
as
dung
beetle
(DBO),
WSO,
fox
(FOX),
moth-flame
(MFO)
algorithms.
also
used
address
different
case
studies
(6
units,
10
11
40
units),
20
separate
runs
using
other
competitive
being
statistically
assessed
demonstrate
its
effectiveness.
results
show
that
outperforms
algorithms,
achieving
best
for
minimum
fuel
cost
Additionally,
statistical
tests
are
conducted
validate
competitiveness
algorithm.
Systems Science & Control Engineering,
Год журнала:
2024,
Номер
12(1)
Опубликована: Авг. 1, 2024
Bald
Eagle
Search
(BES)
is
a
recent
and
highly
successful
swarm-based
metaheuristic
algorithm
inspired
by
the
hunting
strategy
of
bald
eagles
in
capturing
prey.
With
its
remarkable
ability
to
balance
global
local
searches
during
optimization,
BES
effectively
addresses
various
optimization
challenges
across
diverse
domains,
yielding
nearly
optimal
results.
This
paper
offers
comprehensive
review
research
on
BES.
Beginning
with
an
introduction
BES's
natural
inspiration
conceptual
framework,
it
explores
modifications,
hybridizations,
applications
domains.
Then,
critical
evaluation
performance
provided,
offering
update
effectiveness
compared
recently
published
algorithms.
Furthermore,
presents
meta-analysis
developments
outlines
potential
future
directions.
As
swarm-inspired
algorithms
become
increasingly
important
tackling
complex
problems,
this
study
valuable
resource
for
researchers
aiming
understand
algorithms,
mainly
focusing
comprehensively.
It
investigates
evolution,
exploring
solving
intricate
fields.
IEEE Access,
Год журнала:
2024,
Номер
12, С. 67986 - 68002
Опубликована: Янв. 1, 2024
Node
localization
is
a
non-deterministic
polynomial
time
(NP-hard)
problem
in
Wireless
Sensor
Networks
(WSN).
It
involves
determining
the
geographical
position
of
each
node
network.
For
many
applications
WSNs,
such
as
environmental
monitoring,
security
health
and
agriculture,
precise
location
nodes
crucial.
As
result
this
study,
we
propose
novel
efficient
way
to
solve
without
any
regard
environment,
well
predetermined
conditions.
This
proposed
method
based
on
new
Nutcracker
Optimization
Algorithm
(NOA).
By
utilizing
algorithm,
it
possible
maximize
coverage
rates,
decrease
numbers,
maintain
connectivity.
Several
algorithms
were
used
Grey
Wolf
(GWO),
Kepler
Algorithms
(KOA),
Harris
Hawks
Optimizer
(HHO),
Radient-Based
(GBO)
Gazelle
(GOA).
The
was
first
tested
Istanbul,
Turkey,
where
determined
be
suitable
study
area.
metaheuristic-based
approach
distributed
architecture,
scalable
large-scale
networks.
Among
these
metaheuristic
algorithms,
NOA,
KOA,
GWO
have
achieved
significant
performance
terms
rates
(CR),
achieving
96.15%,
87.76%,
93.49%,
respectively.
In
their
ability
sensor
problems,
proven
effective.
Proceedings of the Genetic and Evolutionary Computation Conference,
Год журнала:
2024,
Номер
unknown, С. 41 - 49
Опубликована: Июль 8, 2024
The
number
of
proposed
iterative
optimization
heuristics
is
growing
steadily,
and
with
this
growth,
there
have
been
many
points
discussion
within
the
wider
community.One
particular
criticism
that
raised
towards
new
algorithms
their
focus
on
metaphors
used
to
present
method,
rather
than
emphasizing
potential
algorithmic
contributions.Several
studies
into
popular
metaphor-based
highlighted
these
problems,
even
showcasing
are
functionally
equivalent
older
existing
methods.Unfortunately,
detailed
approach
not
scalable
whole
set
algorithms.Because
this,
we
investigate
ways
in
which
benchmarking
can
shed
light
algorithms.To
end,
run
a
294
algorithm
implementations
BBOB
function
suite.We
how
choice
budget,
performance
measure,
or
other
aspects
experimental
design
impact
comparison
algorithms.Our
results
emphasize
why
key
step
expanding
our
understanding
space,
what
challenges
still
need
be
overcome
fully
gauge
improvements
state-of-the-art
hiding
behind
metaphors.
CCS
CONCEPTS•
Theory
computation
→
Design
analysis
algorithms;
Bio-inspired
optimization.