Alphanumeric Journal,
Journal Year:
2023,
Volume and Issue:
11(1), P. 85 - 100
Published: July 12, 2023
The
COVID-19
pandemic
is
perceived
by
many
to
have
run
its
course,
and
forecasting
progress
no
longer
a
topic
of
much
interest
policymakers
researchers
as
it
once
was.
Nevertheless,
in
order
take
lessons
from
this
extraordinary
two
half
years,
still
makes
sense
critical
look
at
the
vast
body
literature
formed
thereon,
perform
comprehensive
analyses
retrospect.
present
study
directed
towards
that
goal.
It
distinguished
others
encompassing
all
following
features
simultaneously:
(i)
time
series
10
most
affected
countries
are
considered;
(ii)
for
types
periods,
namely
days
weeks,
analyzed;
(iii)
wide
range
exponential
smoothing,
autoregressive
integrated
moving
average,
neural
network
autoregression
models
compared
means
automatic
selection
procedures;
(iv)
basic
methods
benchmarking
purposes
well
mathematical
transformations
data
adjustment
taken
into
account;
(v)
several
test
training
sizes
examined.
Our
experiments
show
performance
common
highly
sensitive
parameter
selection,
bound
deteriorate
dramatically
horizon
extends,
sometimes
fails
be
better
than
even
simplest
alternatives.
We
contend
reliableness
COVID-19,
few
weeks
ahead,
open
debate.
Policymakers
must
exercise
extreme
caution
before
they
make
their
decisions
utilizing
forecast
such
pandemics.
Journal of Intelligent Systems Theory and Applications,
Journal Year:
2025,
Volume and Issue:
8(1), P. 25 - 34
Published: March 7, 2025
The
growing
population
and
industrialization
have
resulted
in
an
increased
demand
for
energy,
which
has
worsened
environmental
problems
such
as
pollution
climate
change.
Renewable
energy
sources
are
considered
a
promising
solution
due
to
their
benefits
limited
potential.
This
study
examines
the
use
of
neural
networks
time
series
analysis
predict
electricity
generation
rates
from
renewable
Turkey.
We
LSTM,
NNAR,
ELM
models,
all
utilize
backpropagation
algorithm
network
forecasting.
Additionally,
we
apply
ARIMA,
Holt’s
trend,
linear
regression,
mean,
exponential
smoothing
models
analysis.
evaluate
performance
using
mean
absolute
error
root
square
on
training
test
data.
showed
that
LSTM
outperformed
ARIMA
(1,2,1),
(2,2,1),
(3,2,1),
NNAR
methods
forecasting
accuracy.
Although
model
initially
had
lowest
error,
its
predictions
made
it
less
suitable
practical
applications.
highlights
effectiveness
predicting
sources.
(3,2,1)
modeling
useful
optimizing
planning
management
Turkey's
future,
contributing
more
sustainable
landscape.
BMC Infectious Diseases,
Journal Year:
2024,
Volume and Issue:
24(1)
Published: March 27, 2024
Abstract
Background
There
are
abundant
studies
on
COVID-19
but
few
its
impact
hepatitis
E.
We
aimed
to
assess
the
effect
of
countermeasures
pattern
E
incidence
and
explore
application
time
series
models
in
analyzing
this
pattern.
Methods
Our
pivotal
idea
was
fit
a
pre-COVID-19
model
with
data
from
before
outbreak
use
deviation
between
forecast
values
actual
reflect
countermeasures.
analyzed
China
2013
2018.
evaluated
fitting
forecasting
capability
3
methods
outbreak.
Furthermore,
we
employed
these
construct
compare
post-COVID-19
forecasts
reality.
Results
Before
outbreak,
Chinese
overall
stationary
seasonal,
peak
March,
trough
October,
higher
levels
winter
spring
than
summer
autumn,
annually.
Nevertheless,
were
extremely
different
reality
sectional
periods
congruous
others.
Conclusions
Since
pandemic,
has
altered
substantially,
greatly
decreased.
The
temporary.
anticipated
gradually
revert
The
methods
of
Artificial
Intelligence
(AI)
have
been
used
in
the
planning
and
operation
power
systems
for
more
than
40
years.
In
recent
years,
due
to
development
microprocessor
data
storage
technologies,
effectiveness
this
use
has
greatly
increased.
This
paper
provides
a
systematic
overview
application
AI
including
Machine
Learning
(ML)
system.
potential
areas
are
divided
into
four
blocks
classification
matrix
clustering
tasks.
Furthermore,
acquisition
setting
parameters
ML
algorithms
presented
discussed
way
considering
supervised
unsupervised
learning
methods.
Based
on
this,
three
complex
examples:
wind
generation
forecasting,
smart
grid
security
as-sessment
(using
two
methods),
automatic
system
fault
detection
detail.
Summary
outlook
conclude
paper.
Animals,
Journal Year:
2025,
Volume and Issue:
15(8), P. 1179 - 1179
Published: April 20, 2025
Antibiotic-free
(ABF)
broiler
production
plays
an
important
role
in
promoting
sustainable
and
welfare-oriented
poultry
farming.
However,
this
system
presents
challenges,
particularly
increased
susceptibility
to
stress
mortality
during
transport.
This
study
aimed
(i)
analyze
time
series
data
on
the
monthly
percentage
of
dead-on-arrival
(%DOA)
(ii)
compare
performance
various
models.
Data
%DOA
from
127,578
transport
truckloads
recorded
between
2018
2024
were
aggregated
into
values.
The
then
decomposed
identify
trends
seasonal
patterns.
models
evaluated
included
SARIMA,
NNAR,
TBATS,
ETS,
XGBoost.
These
trained
using
January
December
2023,
their
forecasting
accuracy
was
test
2024.
Model
assessed
multiple
error
metrics,
including
MAE,
MAPE,
MASE,
RMSE.
results
revealed
a
distinct
pattern
%DOA.
Among
models,
TBATS
ETS
demonstrated
highest
when
applied
data,
with
MAPE
values
21.2%
22.1%,
respectively.
considerably
lower
than
those
NNAR
at
54.4%
XGBoost
29.3%.
Forecasts
for
2025
showed
that
produced
similar
can
serve
as
valuable
decision-support
tool
ABF
production.
By
facilitating
proactive
planning,
these
help
reduce
transport-related
mortality,
improve
animal
welfare,
enhance
overall
operational
efficiency.
Journal of Environmental and Public Health,
Journal Year:
2023,
Volume and Issue:
2023, P. 1 - 15
Published: Jan. 31, 2023
Pakistan
is
considered
among
the
top
five
countries
with
highest
CO2
emissions
globally.
This
calls
for
pragmatic
policy
implementation
by
all
stakeholders
to
bring
finality
this
alarming
situation
since
it
contributes
greatly
global
warming,
thereby
leading
climate
change.
study
an
attempt
make
a
comparative
analysis
of
linear
time
series
models
nonlinear
emission
data
in
Pakistan.
These
and
were
used
model
forecast
future
values
short
period.
To
assess
select
best
these
models,
we
root
mean
square
error
(RMSE)
absolute
(MAE)
as
performance
indicators.
The
outputs
showed
that
machine
learning
are
other
having
lowest
RMSE
MAE
values.
Based
on
forecasted
value
neural
network
autoregressive
model,
Pakistan's
will
be
1.048
metric
tons
per
capita
2028.
increasing
trend
frightening
clear
warning,
suggesting
innovative
policies
must
initiated
reduce
trend.
We
encourage
government
price
companies
entities
ton,
adapt
electricity
production
from
hydro,
wind,
different
sources
no
CO2,
initiate
rigorous
planting
more
trees
populated
areas
forest
covers,
provide
incentives
companies,
organisations,
institutions,
households
come
out
clean
technologies
or
use
those
lower
ones,
fund
studies
develop
less
emissions.
Energies,
Journal Year:
2024,
Volume and Issue:
17(11), P. 2790 - 2790
Published: June 6, 2024
The
methods
of
artificial
intelligence
(AI)
have
been
used
in
the
planning
and
operation
electric
power
systems
for
more
than
40
years.
In
recent
years,
due
to
development
microprocessor
data
storage
technologies,
effectiveness
this
use
has
greatly
increased.
This
paper
provides
a
systematic
overview
application
AI,
including
machine
learning
(ML)
system.
potential
areas
are
divided
into
four
blocks
classification
matrix
clustering
AI
tasks.
Furthermore,
acquisition
setting
parameters
ML
algorithms
presented
discussed
way,
considering
supervised
unsupervised
methods.
Based
on
this,
three
complex
examples,
being
wind
generation
forecasting,
smart
grid
security
assessment
(using
two
methods),
automatic
system
fault
detection
detail.
A
summary
outlook
conclude
paper.
Journal of Environmental and Public Health,
Journal Year:
2023,
Volume and Issue:
2023, P. 1 - 8
Published: May 29, 2023
Background
of
the
Study.
Statistical
models
have
been
extensively
used
in
modeling
and
forecasting
different
fields
agriculture,
economics,
social
sciences,
medical
sciences.
The
transmission
some
diseases
is
a
serious
life
threat
around
globe;
therefore,
proper
assessment
need
time.
Malaria
one
major
life-threatening
Pakistan,
death
cases
due
to
this
disease
reported
during
last
decade.
Methodology.
data
collected
from
Ministry
Health,
Rahim
Yar
Khan,
January
2011
March
2022.
Data
were
analyzed
by
applying
time
series
for
prediction
purposes.
Diagnostic
measures
such
as
RMSE,
MAE,
MAPE
choose
best
model.
Results
Discussion.
This
study
aims
forecast
malaria
choosing
After
comparison,
it
was
concluded
that
Holt–Winter
multiplicative
model
outperformed
ARIMA
SARIMA
models,
with
lowest
MAPE,
MAE
compared
other
models.
district
Khan
forecasted
model,
month
April
2022
2023.
From
results,
minimum
number
found
be
586.75
June
maximum
1281.93
October
among
next
ten
months.
Based
on
paramount
GOP
(Govt.
Pakistan)
enhance
vaccination
policy
erase
impacts
flatten
curve.
Applied Computational Intelligence and Soft Computing,
Journal Year:
2023,
Volume and Issue:
2023, P. 1 - 10
Published: Nov. 7, 2023
Background.
In
economic
theory,
a
steady
consumer
price
index
(CPI)
and
its
associated
low
inflation
rate
(IR)
are
very
much
preferred
to
volatile
one.
CPI
is
considered
major
variable
in
measuring
the
IR
of
country.
These
indices
those
changes
have
significance
monetary
policy
decisions.
this
study,
different
conventional
machine
learning
methodologies
been
applied
model
forecast
Pakistan.
Methods.
Pakistan’s
yearly
data
from
1960
2021
were
modelled
using
seasonal
autoregressive
moving
average
(SARIMA),
neural
network
(NNAR),
multilayer
perceptron
(MLP)
models.
Several
forms
models
compared
by
employing
root
mean
square
error
(RMSE),
(MSE),
absolute
percentage
(MAPE)
as
key
performance
indicators
(KPIs).
Results.
The
20-hidden-layered
MLP
appeared
best-performing
for
forecasting
based
on
KPIs.
Forecasted
values
2022
2031
showed
an
astronomical
increase
value
which
unpleasant
consumers
management.
Conclusion.
increasing
trend
observed
if
not
addressed
will
trigger
rising
purchasing
power,
thereby
causing
higher
commodity
prices.
It
recommended
that
government
put
vibrant
policies
place
address
alarming
situation.