Navigating the Challenges of Rainfall Variability: Precipitation Forecasting using Coalesce Model
Water Resources Management,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Jan. 11, 2025
Language: Английский
Air pollution status and attributable health effects across the state of West Bengal, India, during 2016–2021
Buddhadev Ghosh,
No information about this author
Harish Chandra Barman,
No information about this author
Sayoni Ghosh
No information about this author
et al.
Environmental Monitoring and Assessment,
Journal Year:
2024,
Volume and Issue:
196(2)
Published: Jan. 17, 2024
Language: Английский
Analysis and Prediction of Atmospheric Environmental Quality Based on the Autoregressive Integrated Moving Average Model (ARIMA Model) in Hunan Province, China
Wenyuan Gao,
No information about this author
Tongjue Xiao,
No information about this author
Lin Zou
No information about this author
et al.
Sustainability,
Journal Year:
2024,
Volume and Issue:
16(19), P. 8471 - 8471
Published: Sept. 29, 2024
Based
on
the
panel
data
of
atmospheric
environmental
pollution
in
Hunan
Province
from
2016
to
2023,
autoregressive
integrated
moving
average
model
(ARIMA)
is
introduced
evaluate
and
predict
current
status
quality
China,
constructed
ARIMA
has
an
excellent
prediction
effect
Province.
The
following
conclusions
are
obtained
through
analysis
based
model:
(1)
shows
a
year-on-year
improvement
trend;
(2)
method
reliable
effective
can
accurately
analyze
concentrations
air
pollutants
(PM2.5,
PM10,
SO2,
CO)
quality,
results
show
that
outdoor
will
improve
gradually
each
year
2024
2028;
(3)
this
study
contributes
better
understanding
ambient
during
2016–2023
provides
good
forecasting
for
period
2024–2028.
Language: Английский
Integrating D–S evidence theory and multiple deep learning frameworks for time series prediction of air quality
Siling Feng,
No information about this author
Le Tang,
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Mengxing Huang
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et al.
Scientific Reports,
Journal Year:
2025,
Volume and Issue:
15(1)
Published: Feb. 18, 2025
Abstract
Accurate
prediction
of
air
quality
time
series
data
is
helpful
to
identify
and
warn
pollution
events
in
advance.
Although
the
current
models
have
made
some
progress
improving
accuracy
prediction,
due
impact
specific
pollutants
or
complex
meteorological
conditions,
these
still
problems
low
accuracy,
robustness
generalization
ability
univariate
prediction.
In
order
solve
problems,
this
study
proposes
a
framework
that
integrates
D–S
evidence
theory
variety
deep
learning
models.
The
three
representative
cities
with
climate
characteristics
China
are
obtained
five
indicators
on
collected.
preprocessed
divided
by
length
form
short-term,
medium-term
long-term
input
data,
MLP,
RNN,
CNN,
LSTM,
BI-LSTM
GRU
established
respectively.
By
comparing
performance
six
models,
most
suitable
selected
predict
short,
medium
Taking
results
reliability
as
bodies
theory,
fusion
model
based
established.
For
MAE,
RMSE
MAPE
model,
best
result
increases
7.42%,
4.25%
12.82%
compared
sub
optimal
architecture.
This
shows
integrating
algorithms
provides
an
effective
method
accurately
level
urban
areas.
Language: Английский
Assessing particulate matter (PM2.5) concentrations and variability across Maharashtra using satellite data and machine learning techniques
Ganesh Machhindra Kunjir,
No information about this author
Suvarna Tikle,
No information about this author
Sandipan Das
No information about this author
et al.
Discover Sustainability,
Journal Year:
2025,
Volume and Issue:
6(1)
Published: April 4, 2025
Language: Английский
PM2.5 concentration prediction system combining fuzzy information granulation and multi-model ensemble learning
Journal of Environmental Sciences,
Journal Year:
2024,
Volume and Issue:
unknown
Published: July 1, 2024
Language: Английский
Predicting hospital admissions for upper respiratory tract complaints: An artificial neural network approach integrating air pollution and meteorological factors
Environmental Monitoring and Assessment,
Journal Year:
2024,
Volume and Issue:
196(8)
Published: July 24, 2024
Language: Английский
Predicting long-term air pollutant concentrations through deep learning-based integration of heterogeneous urban data
Chao Chen,
No information about this author
Hui Liu,
No information about this author
Chengming Yu
No information about this author
et al.
Atmospheric Pollution Research,
Journal Year:
2024,
Volume and Issue:
15(11), P. 102282 - 102282
Published: Aug. 8, 2024
Language: Английский
Dynamic Modeling Under Temperature Variations for Sustainable Air Quality Solutions: PM2.5 and Negative Ion Interactions
Sustainability,
Journal Year:
2024,
Volume and Issue:
17(1), P. 70 - 70
Published: Dec. 26, 2024
Air
pollution
caused
by
fine
particles
known
as
PM2.5
is
a
significant
health
concern
worldwide,
contributing
to
illnesses
like
asthma,
heart
disease,
and
lung
cancer.
To
address
this
issue,
study
focused
on
improving
air
purification
systems
using
negative
ions,
which
can
attach
these
harmful
help
remove
them
from
the
air.
This
paper
developed
novel
mathematical
model
based
linear
differential
equations
how
interact
with
making
it
easier
design
more
effective
systems.
The
proposed
was
validated
in
small,
controlled
space,
common
urban
pollutants
such
cigarette
smoke,
incense,
coal,
gasoline.
These
tests
were
conducted
at
different
temperatures
under
two
levels
of
ion
generation.
results
showed
that
system
could
over
99%
five
minutes
when
low
or
moderate.
However,
higher
temperatures,
system’s
performance
dropped
significantly.
research
goes
beyond
earlier
studies
examining
temperature
affects
process,
had
not
been
fully
explored
before.
Furthermore,
approach
aligns
global
sustainability
goals
promoting
public
health,
reducing
healthcare
costs,
providing
scalable
solutions
for
sustainable
living.
Language: Английский