Assessing the impact of rainfall, topography, and human disturbances on nutrient levels using integrated machine learning and GAMs models in the Choctawhatchee River Watershed
Journal of Environmental Management,
Journal Year:
2025,
Volume and Issue:
375, P. 124361 - 124361
Published: Jan. 31, 2025
Language: Английский
DAD-YOLO as a novel computer vision tool to predict the environmental impact of harmful algae presence in contaminated river water employed for large-scale irrigation to agricultural field
S.S. Jayakrishna,
No information about this author
S. Sankar Ganesh
No information about this author
Journal of Water Process Engineering,
Journal Year:
2025,
Volume and Issue:
71, P. 107439 - 107439
Published: March 1, 2025
Language: Английский
Dissolved Oxygen Prediction in the Dianchi River Basin with Explainable Artificial Intelligence based on Physical Prior Knowledge
Environmental Modelling & Software,
Journal Year:
2025,
Volume and Issue:
188, P. 106412 - 106412
Published: March 5, 2025
Language: Английский
An improved graph neural network integrating indicator attention and spatio-temporal correlation for dissolved oxygen prediction
Fei Ding,
No information about this author
Shilong Hao,
No information about this author
Mingcen Jiang
No information about this author
et al.
Ecological Informatics,
Journal Year:
2025,
Volume and Issue:
unknown, P. 103126 - 103126
Published: April 1, 2025
Language: Английский
Real-time, reagent-free total phosphorus soft sensor based on frequency-enhanced decomposed transformer model
Weilin Guo,
No information about this author
Yizhang Wen,
No information about this author
Minghuan Liu
No information about this author
et al.
Measurement,
Journal Year:
2025,
Volume and Issue:
unknown, P. 117509 - 117509
Published: April 1, 2025
Language: Английский
Evaluation of Tree-Based Voting Algorithms in Water Quality Classification Prediction
Sustainability,
Journal Year:
2024,
Volume and Issue:
16(23), P. 10634 - 10634
Published: Dec. 4, 2024
Accurately
predicting
the
state
of
surface
water
quality
is
crucial
for
ensuring
sustainable
use
resources
and
environmental
protection.
This
often
requires
a
focus
on
range
factors
affecting
quality,
such
as
physical
chemical
parameters.
Tree
models,
with
their
flexible
tree-like
structure
strong
capability
partitioning
selecting
influential
features,
offer
clear
decision-making
rules,
making
them
suitable
this
task.
However,
an
individual
decision
tree
model
has
limitations
cannot
fully
capture
complex
relationships
between
all
influencing
parameters
quality.
Therefore,
study
proposes
method
combining
ensemble
models
voting
algorithms
to
predict
classification.
was
conducted
using
five
monitoring
sites
in
Qingdao,
representing
portion
many
municipal
environment
stations
China,
employing
single-factor
determination
stringent
standards.
The
soft
algorithm
achieved
highest
accuracy
99.91%,
addressed
imbalance
original
categories,
reaching
Matthews
Correlation
Coefficient
(MCC)
99.88%.
In
contrast,
conventional
machine
learning
algorithms,
logistic
regression
K-nearest
neighbors,
lower
accuracies
75.90%
91.33%,
respectively.
Additionally,
model’s
supervision
misclassified
data
demonstrated
its
good
rules.
trained
also
transferred
directly
at
13
Beijing,
where
it
performed
robustly,
achieving
hard
97.73%
MCC
96.81%.
countries’
systems,
different
qualities
correspond
uses,
magnitude
related
categories;
critical
can
even
determine
category.
are
highly
capable
handling
nonlinear
important
allowing
identify
exploit
interactions
parameters,
which
especially
when
multiple
together
there
significant
motivation
develop
model-based
prediction
models.
Language: Английский