Mathematics,
Journal Year:
2023,
Volume and Issue:
11(5), P. 1068 - 1068
Published: Feb. 21, 2023
Recent
years
have
seen
an
increasing
interest
in
developing
robust,
accurate
and
possibly
fast
forecasting
methods
for
both
energy
production
consumption.
Traditional
approaches
based
on
linear
architectures
are
not
able
to
fully
model
the
relationships
between
variables,
particularly
when
dealing
with
many
features.
We
propose
a
Gradient-Boosting–Machine-based
framework
forecast
demand
of
mixed
customers
dispatching
company,
aggregated
according
their
location
within
seven
Italian
electricity
market
zones.
The
main
challenge
is
provide
precise
one-day-ahead
predictions,
despite
most
recent
data
being
two
months
old.
This
requires
exogenous
regressors,
e.g.,
as
historical
features
part
air
temperature,
be
incorporated
scheme
tailored
specific
case.
Numerical
simulations
conducted,
resulting
MAPE
5–15%
zone.
Gradient
Boosting
performs
significantly
better
compared
classical
statistical
models
time
series,
such
ARMA,
unable
capture
holidays.
IEEE Transactions on Industrial Informatics,
Journal Year:
2021,
Volume and Issue:
17(10), P. 7050 - 7059
Published: Feb. 7, 2021
Predictions
of
renewable
energy
(RE)
generation
and
electricity
load
are
critical
to
smart
grid
operation.
However,
the
prediction
task
remains
challenging
due
intermittent
chaotic
character
RE
sources,
diverse
user
behavior
power
consumers.
This
article
presents
a
novel
method
for
using
improved
stacked
gated
recurrent
unit-recurrent
neural
network
(GRU-RNN)
both
univariate
multivariate
scenarios.
First,
multiple
sensitive
monitoring
parameters
or
historical
consumption
data
selected
according
correlation
analysis
form
input
data.
Second,
GRU-RNN
simplified
GRU
is
constructed
with
training
algorithm
based
on
AdaGrad
adjustable
momentum.
The
modified
structure
enhance
efficiency
robustness.
Third,
used
establish
an
accurate
mapping
between
variables
its
self-feedback
connections
mechanism.
proposed
verified
by
two
experiments:
wind
weather
experimental
results
demonstrate
that
outperforms
state-of-the-art
methods
machine
learning
deep
in
achieving
effective
Smart Cities,
Journal Year:
2021,
Volume and Issue:
4(2), P. 548 - 568
Published: April 22, 2021
The
smart
grid
is
enabling
the
collection
of
massive
amounts
high-dimensional
and
multi-type
data
about
electric
power
operations,
by
integrating
advanced
metering
infrastructure,
control
technologies,
communication
technologies.
However,
traditional
modeling,
optimization,
technologies
have
many
limitations
in
processing
data;
thus,
applications
artificial
intelligence
(AI)
techniques
are
becoming
more
apparent.
This
survey
presents
a
structured
review
existing
research
into
some
common
AI
applied
to
load
forecasting,
stability
assessment,
faults
detection,
security
problems
systems.
It
also
provides
further
challenges
for
applying
realize
truly
Finally,
this
opportunities
problems.
paper
concludes
that
can
enhance
improve
reliability
resilience
Logistics Supply Chain Sustainability and Global Challenges,
Journal Year:
2020,
Volume and Issue:
11(1), P. 51 - 76
Published: Feb. 1, 2020
Abstract
Electric
load
forecasting
(ELF)
is
a
vital
process
in
the
planning
of
electricity
industry
and
plays
crucial
role
electric
capacity
scheduling
power
systems
management
and,
therefore,
it
has
attracted
increasing
academic
interest.
Hence,
accuracy
great
importance
for
energy
generating
system
management.
This
paper
presents
review
methods
models
load.
About
45
papers
have
been
used
comparison
based
on
specified
criteria
such
as
time
frame,
inputs,
outputs,
scale
project,
value.
The
reveals
that
despite
relative
simplicity
all
reviewed
models,
regression
analysis
still
widely
efficient
long-term
forecasting.
As
short-term
predictions,
machine
learning
or
artificial
intelligence-based
Artificial
Neural
Networks
(ANN),
Support
Vector
Machines
(SVM),
Fuzzy
logic
are
favored.
IEEE Access,
Journal Year:
2022,
Volume and Issue:
10, P. 4794 - 4831
Published: Jan. 1, 2022
Smartgrid
is
a
paradigm
that
was
introduced
into
the
conventional
electricity
network
to
enhance
way
generation,
transmission,
and
distribution
networks
interrelate.
It
involves
use
of
Information
Communication
Technology
(ICT)
other
solution
in
fault
intrusion
detection,
mere
monitoring
energy
distribution.
However,
on
one
hand,
actual
earlier
smartgrid,
do
not
integrate
more
advanced
features
such
as
automatic
decision
making,
security,
scalability,
self-healing
awareness,
real-time
monitoring,
cross-layer
compatibility,
etc.
On
emergence
digitalization
communication
infrastructure
support
economic
sector
which
among
them
are
generation
grid
with
Artificial
Intelligence
(AI)
large-scale
Machine
(M2M)
communication.
With
future
Massive
Internet
Things
(MIoT)
pillars
5G/6G
factory,
it
enabler
next
smart
by
providing
needed
platform
integrates,
addition
infrastructure,
AI
IoT
support,
multitenant
system.
This
paper
aim
at
presenting
comprehensive
review
research
trends
technological
background,
discuss
futuristic
next-generation
driven
artificial
intelligence
leverage
5G.
In
addition,
discusses
challenges
smart-grids
relate
integration
AI,
5G
for
better
architecture.
Also,
proffers
possible
solutions
some
standards
this
novel
trend.
A
corresponding
work
will
dwell
implementation
discussed
grid,
using
Matlab,
NS2/NS3,
Open-daylight
Mininet
soft
tools
compare
related
literature.
Energies,
Journal Year:
2023,
Volume and Issue:
16(3), P. 1077 - 1077
Published: Jan. 18, 2023
There
is
an
ongoing,
revolutionary
transformation
occurring
across
the
globe.
This
altering
established
processes,
disrupting
traditional
business
models
and
changing
how
people
live
their
lives.
The
power
sector
no
exception
going
through
a
radical
of
its
own.
Renewable
energy,
distributed
energy
sources,
electric
vehicles,
advanced
metering
communication
infrastructure,
management
algorithms,
efficiency
programs
new
digital
solutions
drive
change
in
sector.
These
changes
are
fundamentally
supply
chains,
shifting
geopolitical
powers
revising
landscapes.
Underlying
infrastructural
components
expected
to
generate
enormous
amounts
data
support
these
applications.
Facilitating
flow
information
coming
from
system′s
prerequisite
for
applying
Artificial
Intelligence
(AI)
New
components,
flows
AI
techniques
will
play
key
role
demand
forecasting,
system
optimisation,
fault
detection,
predictive
maintenance
whole
string
other
areas.
In
this
context,
digitalisation
becoming
one
most
important
factors
sector′s
process.
Digital
possess
significant
potential
resolving
multiple
issues
chain.
Considering
growing
importance
AI,
paper
explores
current
status
technology’s
adoption
rate
review
conducted
by
analysing
academic
literature
but
also
several
hundred
companies
around
world
that
developing
implementing
on
grid’s
edge.
Electronics,
Journal Year:
2023,
Volume and Issue:
12(22), P. 4652 - 4652
Published: Nov. 15, 2023
Precise
anticipation
of
electrical
demand
holds
crucial
importance
for
the
optimal
operation
power
systems
and
effective
management
energy
markets
within
domain
planning.
This
study
builds
on
previous
research
focused
application
artificial
neural
networks
to
achieve
accurate
load
forecasting.
In
this
paper,
an
improved
methodology
is
introduced,
centering
around
bidirectional
Long
Short-Term
Memory
(LSTM)
(NN).
The
primary
aim
proposed
LSTM
network
enhance
predictive
performance
by
capturing
intricate
temporal
patterns
interdependencies
time
series
data.
While
conventional
feed-forward
are
suitable
standalone
data
points,
consumption
characterized
sequential
dependencies,
necessitating
incorporation
memory-based
concepts.
model
designed
furnish
prediction
framework
with
capacity
assimilate
leverage
information
from
both
preceding
forthcoming
steps.
augmentation
significantly
bolsters
capabilities
encapsulating
contextual
understanding
Extensive
testing
performed
using
multiple
datasets,
results
demonstrate
significant
improvements
in
accuracy
compared
simpleRNN-based
framework.
successfully
captures
underlying
dependencies
data,
achieving
superior
as
gauged
metrics
such
root
mean
square
error
(RMSE)
absolute
(MAE).
outperforms
models,
a
remarkable
RMSE,
attesting
its
forecast
impending
precision.
extended
contributes
field
leveraging
forecasting
accuracy.
Specifically,
BiLSTM’s
MAE
0.122
demonstrates
accuracy,
outperforming
RNN
(0.163),
(0.228),
GRU
(0.165)
approximately
25%,
46%,
26%,
best
variation
all
networks,
at
24-h
step,
while
RMSE
0.022
notably
lower
than
that
(0.033),
(0.055),
respectively.
findings
highlight
significance
incorporating
memory
advanced
architectures
precise
prediction.
has
potential
facilitate
more
efficient
planning
market
management,
supporting
decision-making
processes
systems.
International Journal of Energy Research,
Journal Year:
2021,
Volume and Issue:
45(9), P. 13489 - 13530
Published: April 12, 2021
With
the
growth
of
forecasting
models,
energy
is
used
for
better
planning,
operation,
and
management
in
electric
grid.
It
important
to
improve
accuracy
a
faster
decision-making
process.
Big
data
can
handle
large
scale
datasets
extract
patterns
fed
deep
learning
models
that
than
traditional
hence,
recently
started
its
application
forecasting.
In
this
study,
an
in-depth
insight
initially
derived
by
investigating
artificial
intelligence
(AI)
machine
(ML)
techniques
with
their
strengths
weaknesses,
enhancing
consistency
renewable
integration
modernizing
overall
However,
Deep
(DL)
algorithms
have
capability
big
capturing
inherent
non-linear
features
through
automatic
feature
extraction
methods.
Hence,
extensive
exhaustive
review
generative,
hybrid,
discriminative
DL
being
examined
short-term,
medium-term,
long-term
energy,
consumption,
demand,
supply
etc.
This
study
also
explores
different
decomposition
strategies
build
models.
The
recent
success
investigated,
insights
paradoxes
parameter
optimization
during
training
model
are
identified.
impact
weather
prediction
wind
solar
detail.
From
existing
literatures,
it
has
seen
average
mean
absolute
percentage
error
(MAPE)
value
10.29%
6.7%
respectively.
Current
technology
barriers
involved
implementing
these
recommendations
overcome
system
An
analysis,
discussions
results,
scope
improvement
provided
including
potential
directions
future
research