Mühendislik Bilimleri ve Tasarım Dergisi,
Год журнала:
2025,
Номер
13(1), С. 1 - 16
Опубликована: Март 19, 2025
Markov
atlama
sistemlerinin
(Markov
Jump
System–MJS),
bilinmeyen
dinamikler,
rastgele
geçişler
ve
çevresel
gürültüler
nedeniyle
denetlenmesi
zordur.
Bu
makalede,
gerçek
zamanlı
doğrusal
MJS'ler
optimizasyon
yöntemleri
kullanılarak
genel
modelleme
denetim
performansını
iyileştirmek
için
gözden
geçirilmiştir.
çalışmayla
elde
edilen
katkılar
iki
başlıkta
değerlendirilmektedir:
i)
bir
RLC
devresinden
toplanan
veriler
kara-kutu
tanımlama,
ii)
oransal-integral-türev
(Proportional-Integral-Derivative
-
PID)
denetleyicinin
tasarımında
sezgisel
yöntemi
olan
Ergen
Kimliği
Arama
algoritmasının
(AISA)
ilk
kez
kullanımı.
amaçla,
MJ'lerin
dinamiklerini
modellemek
tahmin
etmek
Aşırı
Öğrenme
Makinesi
(Extreme
Learning
Machine-
ELM)
modeli
oluşturulmuştur.
Ardından,
yığın
içerisinde
ELM
en
uygun
PID
parametreleri
kümesi
bulunmuştur.
Denetleyicinin
parametrelerini
optimize
literatürde
yaygın
olarak
kullanılan
meta-sezgisel
algoritmalar
AISA
ile
karşılaştırılmıştır.
Simülasyon
sonuçlarına
göre
iyi
uygunluk
değerine
kısa
sürede
ulaşan
denetleyicisine
ait
parametreler
0.005
hata
oranı
edilmiştir.
Önerilen
yaklaşım,
davranışı
sergileyen
deneysel
devresinin
modellenmesi
denetimi
uygulanmıştır.
Mathematical Problems in Engineering,
Год журнала:
2021,
Номер
2021, С. 1 - 12
Опубликована: Июнь 9, 2021
Optimization
is
a
buzzword,
whenever
researchers
think
of
engineering
problems.
This
paper
presents
new
metaheuristic
named
dingo
optimizer
(DOX)
which
motivated
by
the
behavior
(Canis
familiaris
dingo).
The
overall
concept
to
develop
this
method
involving
collaborative
and
social
dingoes.
developed
algorithm
based
on
hunting
dingoes
that
includes
exploration,
encircling,
exploitation.
All
above
prey
steps
are
modeled
mathematically
implemented
in
simulator
test
performance
proposed
algorithm.
Comparative
analyses
drawn
among
approach
grey
wolf
(GWO)
particle
swarm
(PSO).
Some
well-known
functions
used
for
comparative
study
work.
results
reveal
performed
significantly
better
than
other
nature-inspired
algorithms.
Swarm and Evolutionary Computation,
Год журнала:
2023,
Номер
77, С. 101248 - 101248
Опубликована: Янв. 14, 2023
Metaheuristics
are
popularly
used
in
various
fields,
and
they
have
attracted
much
attention
the
scientific
industrial
communities.
In
recent
years,
number
of
new
metaheuristic
names
has
been
continuously
growing.
Generally,
inventors
attribute
novelties
these
algorithms
to
inspirations
from
either
biology,
human
behaviors,
physics,
or
other
phenomena.
addition,
algorithms,
compared
against
basic
versions
metaheuristics
using
classical
benchmark
problems,
show
competitive
performances.
However,
many
not
rigorously
tested
on
challenging
suites
with
state-of-the-art
variants.
Therefore,
this
study,
we
exhaustively
tabulate
more
than
500
metaheuristics.
particular,
several
representative
introduced
two
aspects,
namely,
inspirational
source
essential
operators
for
generating
solutions.
To
comparatively
evaluate
performance
newly
proposed
metaheuristics,
11
(generally
high
numbers
citations)
4
comprehensively
CEC2017
suite.
For
fair
comparisons,
a
parameter
tuning
tool
named
irace
is
automatically
configure
parameters
all
15
algorithms.
whether
search
bias
origin
(i.e.,
center
space)
investigated.
All
experimental
results
analyzed
by
nonparametric
statistical
methods,
including
Bayesian
rank-sum
test,
Friedman
Wilcoxon
signed-rank
critical
difference
plot
test.
Moreover,
convergence,
diversity,
trade-off
between
exploration
exploitation
also
analyzed.
The
that
EBCM
algorithm
performs
similarly
same
properties
such
as
trade-offs,
aspects.
10
less
efficient
robust
likely
deteriorate
due
certain
transformations,
while
affected
transformations
shifting
global
optimal
point
away
space.
It
should
be
noted
that,
except
EBCM,
inferior
terms
convergence
speed
ability
CEC
2017
functions.
rougher
present
their
behavior
oscillations)
population
diversity
Finally,
important
issues
relevant
research
area
discussed
some
potential
directions
suggested.
Array,
Год журнала:
2022,
Номер
14, С. 100164 - 100164
Опубликована: Апрель 9, 2022
Internet-of-Things
(IoT)
has
gained
quick
popularity
with
the
evolution
of
technologies
such
as
big
data
analytics,
block-chain,
artificial
intelligence,
machine
learning,
and
deep
learning.
IoT
based
systems
provides
smart
automatic
framework
for
efficient
decision
making
automation
various
task
to
make
human
life
easy.
Meta-heuristic
algorithms
are
self-organized
decentralized
used
solving
complex
problems
using
team
intelligence.
Recently,
meta-heuristic
been
widely
a
number
challenges.
This
paper
presents
systematic
review
unfolding
applications.
The
broad
classification
existing
documented.
Further,
prominent
applications
system
presented.
Moreover,
current
research
questions
included
illustrate
new
opportunities
researchers.
Finally,
trends
in
possible
future
directions
will
provide
researchers
working
field
system.
Engineering Applications of Artificial Intelligence,
Год журнала:
2022,
Номер
117, С. 105622 - 105622
Опубликована: Ноя. 25, 2022
The
aim
of
this
study
was
to
gather,
discuss,
and
compare
recently
developed
metaheuristics
understand
the
pace
development
in
field
make
some
recommendations
for
research
community
practitioners.
By
thoroughly
comprehensively
searching
literature
narrowing
search
results,
we
created
with
a
list
57
novel
metaheuristic
algorithms.
Based
on
availability
source
code,
reviewed
analysed
optimization
capability
26
these
algorithms
through
series
experiments.
We
also
evaluated
exploitation
exploration
capabilities
by
using
50
unimodal
functions
multimodal
functions,
respectively.
In
addition,
assessed
balance
29
shifted,
rotated,
composite,
hybrid
CEC-BC-2017
benchmark
functions.
Moreover,
applicability
four
real-world
constrained
engineering
problems.
To
rank
algorithms,
performed
nonparametric
statistical
test,
Friedman
mean
test.
results
declared
that
GBO,
PO,
MRFO
have
better
capabilities.
found
MPA,
FBI,
HBO
be
most
balanced.
Finally,
based
problems,
HBO,
MA
are
suitable.
Collectively,
confidently
recommend
Materials Testing,
Год журнала:
2021,
Номер
63(4), С. 336 - 340
Опубликована: Апрель 1, 2021
Abstract
Vehicle
component
design
is
crucial
for
developing
a
vehicle
prototype,
as
optimum
parts
can
lead
to
cost
reduction
and
performance
enhancement
of
the
system.
The
use
metaheuristics
optimization
has
been
commonplace
due
several
advantages:
robustness
simplicity.
This
paper
aims
demonstrate
shape
bracket
by
using
newly
invented
metaheuristic.
new
optimizer
termed
ecogeography-based
algorithm
(EBO).
arguably
first
application
optimizer.
problem
posed
while
EBO
implemented
solve
problem.
It
found
that
results
obtained
from
are
better
when
compared
other
optimizers
such
equilibrium
algorithm,
marine
predators
slime
mold
algorithm.