Electronics,
Год журнала:
2024,
Номер
13(7), С. 1372 - 1372
Опубликована: Апрель 5, 2024
In
this
contribution,
a
novel
optimization
approach,
derived
from
the
behavioral
patterns
exhibited
by
Duroc
pig
herds,
is
proposed.
developed
metaheuristic,
termed
Artificial
Pigs
Optimization
(ADPO),
Ordered
Fuzzy
Numbers
(OFN)
have
been
applied
to
articulate
and
elucidate
dynamics
of
herd.
A
series
experiments
has
conducted,
using
eight
standard
benchmark
functions,
characterized
multiple
extrema.
To
facilitate
comprehensive
comparative
analysis,
employing
Particle
Swarm
(PSO),
Bat
Algorithm
(BA),
Genetic
(GA),
were
executed
on
same
set
functions.
It
was
found
that,
in
majority
cases,
ADPO
outperformed
alternative
methods.
Oxford Open Materials Science,
Год журнала:
2024,
Номер
4(1)
Опубликована: Янв. 1, 2024
Abstract
Machine
intelligence
continues
to
rise
in
popularity
as
an
aid
the
design
and
discovery
of
novel
metamaterials.
The
properties
metamaterials
are
essentially
controllable
via
their
architectures
until
recently,
process
has
relied
on
a
combination
trial-and-error
physics-based
methods
for
optimization.
These
processes
can
be
time-consuming
challenging,
especially
if
space
metamaterial
optimization
is
explored
thoroughly.
Artificial
(AI)
machine
learning
(ML)
used
overcome
challenges
like
these
pre-processed
massive
datasets
very
accurately
train
appropriate
models.
models
broad,
describing
properties,
structure,
function
at
numerous
levels
hierarchy,
using
relevant
inputted
knowledge.
Here,
we
present
comprehensive
review
literature
where
state-of-the-art
design,
development
In
this
review,
individual
approaches
categorized
based
methodology
application.
We
further
trends
over
wide
range
problems
including:
acoustics,
photonics,
plasmonics,
mechanics,
more.
Finally,
identify
discuss
recent
research
directions
highlight
current
gaps
Applied Sciences,
Год журнала:
2025,
Номер
15(2), С. 603 - 603
Опубликована: Янв. 9, 2025
The
Material
Generation
Optimization
(MGO)
algorithm
is
an
innovative
approach
inspired
by
material
chemistry
which
emulates
the
processes
of
chemical
compound
formation
and
stabilization
to
thoroughly
explore
refine
parameter
space.
By
simulating
bonding
processes—such
as
ionic
covalent
bonds—MGO
generates
new
solution
candidates
evaluates
their
stability,
guiding
toward
convergence
on
optimal
values.
To
improve
its
search
efficiency,
this
paper
introduces
Enhanced
(IMGO)
algorithm,
integrates
a
Quadratic
Interpolated
Learner
Process
(QILP).
Unlike
conventional
random
selection,
QILP
strategically
selects
three
distinct
compounds,
resulting
in
increased
diversity,
more
thorough
exploration
space,
improved
resistance
local
optima.
adaptable
non-linear
adjustments
QILP’s
quadratic
function
allow
traverse
complex
landscapes
effectively.
This
IMGO,
along
with
original
MGO,
developed
support
applications
across
phases,
showcasing
versatility
enhanced
optimization
capabilities.
Initially,
both
MGO
algorithms
are
evaluated
using
several
mathematical
benchmarks
from
CEC
2017
test
suite
measure
Following
this,
applied
following
well-known
engineering
problems:
welded
beam
design,
rolling
element
bearing
pressure
vessel
design.
simulation
results
then
compared
various
established
bio-inspired
algorithms,
including
Artificial
Ecosystem
(AEO),
Fitness–Distance-Balance
AEO
(FAEO),
Chef-Based
Algorithm
(CBOA),
Beluga
Whale
(BWOA),
Arithmetic-Trigonometric
(ATOA),
Atomic
Orbital
Searching
(AOSA).
Moreover,
IMGO
tested
real
Egyptian
power
distribution
system
optimize
placement
PV
capacitor
units
aim
minimizing
energy
losses.
Lastly,
parameters
estimation
problem
successfully
solved
via
considering
commercial
RTC
France
cell.
Comparative
studies
demonstrate
that
not
only
achieves
significant
loss
reduction
but
also
contributes
environmental
sustainability
reducing
emissions,
overall
effectiveness
practical
applications.
outcomes
23
benchmark
models
average
accuracy
enhancement
65.22%
consistency
69.57%
method.
Also,
application
achieved
computational
errors
27.8%
while
maintaining
superior
stability
alternative
methods.
Biomimetics,
Год журнала:
2023,
Номер
8(8), С. 619 - 619
Опубликована: Дек. 17, 2023
In
this
paper,
a
new
bio-inspired
metaheuristic
algorithm
called
Giant
Armadillo
Optimization
(GAO)
is
introduced,
which
imitates
the
natural
behavior
of
giant
armadillo
in
wild.
The
fundamental
inspiration
design
GAO
derived
from
hunting
strategy
armadillos
moving
towards
prey
positions
and
digging
termite
mounds.
theory
expressed
mathematically
modeled
two
phases:
(i)
exploration
based
on
simulating
movement
mounds,
(ii)
exploitation
armadillos'
skills
order
to
rip
open
performance
handling
optimization
tasks
evaluated
solve
CEC
2017
test
suite
for
problem
dimensions
equal
10,
30,
50,
100.
results
show
that
able
achieve
effective
solutions
problems
by
benefiting
its
high
abilities
exploration,
exploitation,
balancing
them
during
search
process.
quality
obtained
compared
with
twelve
well-known
algorithms.
simulation
presents
superior
competitor
algorithms
providing
better
most
benchmark
functions.
statistical
analysis
Wilcoxon
rank
sum
confirms
has
significant
superiority
over
implementation
2011
four
engineering
proposed
approach
dealing
real-world
applications.
Biomimetics,
Год журнала:
2023,
Номер
8(6), С. 490 - 490
Опубликована: Окт. 18, 2023
Correct
modelling
and
estimation
of
solar
cell
characteristics
are
crucial
for
effective
performance
simulations
PV
panels,
necessitating
the
development
creative
approaches
to
improve
energy
conversion.
When
handling
this
complex
problem,
traditional
optimisation
algorithms
have
significant
disadvantages,
including
a
predisposition
get
trapped
in
certain
local
optima.
This
paper
develops
Mantis
Search
Algorithm
(MSA),
which
draws
inspiration
from
unique
foraging
behaviours
sexual
cannibalism
praying
mantises.
The
suggested
MSA
includes
three
stages
optimisation:
prey
pursuit,
assault,
cannibalism.
It
is
created
R.TC
France
Ultra
85-P
panel
related
Shell
PowerMax
calculating
parameters
examining
six
case
studies
utilising
one-diode
model
(1DM),
two-diode
three-diode
(3DM).
Its
assessed
contrast
recently
developed
optimisers
neural
network
algorithm
(NNA),
dwarf
mongoose
(DMO),
zebra
(ZOA).
In
light
adopted
approach,
simulation
findings
electrical
power
systems.
methodology
improves
1DM,
2DM,
3DM
by
12.4%,
44.05%,
48.88%,
28.96%,
43.19%,
55.81%,
37.71%,
32.71%,
60.13%
relative
DMO,
NNA,
ZOA
approaches,
respectively.
For
panel,
designed
technique
achieves
improvements
62.05%,
67.14%,
84.25%,
49.05%,
53.57%,
74.95%,
37.03%,
37.4%,
59.57%
compared
techniques,
Biomimetics,
Год журнала:
2023,
Номер
8(4), С. 332 - 332
Опубликована: Июль 27, 2023
The
present
study
introduces
a
subtraction-average-based
optimization
algorithm
(SAOA),
unique
enhanced
evolutionary
technique
for
solving
engineering
problems.
typical
SAOA
works
by
subtracting
the
average
of
searcher
agents
from
position
population
members
in
search
space.
To
increase
searching
capabilities,
this
proposes
an
improved
SAO
(ISAO)
that
incorporates
cooperative
learning
based
on
leader
solution.
First,
after
considering
testing
different
standard
mathematical
benchmark
functions,
proposed
ISAOA
is
assessed
comparison
to
SAOA.
simulation
results
declare
establishes
great
superiority
over
Additionally,
adopted
handle
power
system
applications
Thyristor
Controlled
Series
Capacitor
(TCSC)
allocation-based
losses
reduction
electrical
grids.
and
are
employed
optimally
size
TCSCs
simultaneously
select
their
installed
transmission
lines.
Both
compared
two
recent
algorithms,
Artificial
Ecosystem
Optimizer
(AEO)
AQuila
Algorithm
(AQA),
other
effective
well-known
Grey
Wolf
(GWO)
Particle
Swarm
(PSO).
In
three
separate
case
studies,
IEEE-30
bus
used
purpose
while
varying
numbers
TCSC
devices
will
be
deployed.
suggested
ISAOA's
simulated
implementations
claim
significant
loss
reductions
analyzed
situations
GWO,
AEO,
PSO,
AQA.
Applied Sciences,
Год журнала:
2024,
Номер
14(6), С. 2433 - 2433
Опубликована: Март 13, 2024
Multiple
Sequence
Alignment
(MSA)
plays
a
pivotal
role
in
bioinformatics,
facilitating
various
critical
biological
analyses,
including
the
prediction
of
unknown
protein
structures
and
functions.
While
numerous
methods
are
available
for
MSA,
bioinspired
algorithms
stand
out
their
efficiency.
Despite
growing
research
interest
addressing
MSA
challenge,
only
handful
comprehensive
reviews
have
been
undertaken
this
domain.
To
bridge
gap,
study
conducts
thorough
analysis
bioinspired-based
through
systematic
literature
review
(SLR).
By
focusing
on
publications
from
2010
to
2024,
we
aim
offer
most
current
insights
into
field.
Through
rigorous
eligibility
criteria
quality
standards,
identified
45
relevant
papers
review.
Our
predominantly
concentrates
techniques
within
context
MSA.
Notably,
our
findings
highlight
Genetic
Algorithm
Memetic
Optimization
as
commonly
utilized
Furthermore,
benchmark
datasets
such
BAliBASE
SABmark
frequently
employed
evaluating
solutions.
Structural-based
emerge
preferred
approach
assessing
solutions,
revealed
by
Additionally,
explores
trends,
challenges,
unresolved
issues
realm
offering
practitioners
researchers
valuable
understanding
ABSTRACT
In
the
context
of
industrial
automation,
optimising
automated
guided
vehicle
(AGV)
trajectories
is
crucial
for
enhancing
operational
efficiency
and
safety.
They
must
travel
in
crowded
work
areas
cross
narrow
corridors
with
strict
safety
time
requirements.
Bio‐inspired
optimization
algorithms
have
emerged
as
a
promising
approach
to
deal
complex
scenarios.
Thus,
this
paper
explores
ability
three
novel
bio‐inspired
algorithms:
Bat
Algorithm
(BA),
Whale
Optimization
(WOA)
Gazelle
(GOA);
optimise
AGV
path
planning
environments.
To
do
it,
new
strategy
described:
trajectory
based
on
clothoid
curves
specialised
piece‐wise
fitness
function
which
prioritises
designed.
Simulation
experiments
were
conducted
across
different
occupancy
maps
evaluate
performance
each
algorithm.
WOA
demonstrates
faster
providing
suitable
solutions
4
times
than
GOA.
Meanwhile,
GOA
gives
better
metrics
but
demands
more
computational
time.
The
study
highlights
potential
approaches
optimisation
suggests
avenues
future
research,
including
hybrid
algorithm
development.