Cropland Suitability Prediction Method Based on Biophysical Variables from Copernicus Data and Machine Learning
Applied Sciences,
Год журнала:
2025,
Номер
15(1), С. 372 - 372
Опубликована: Янв. 2, 2025
The
goal
of
this
study
was
to
propose
and
validate
a
method
for
predicting
cropland
suitability
based
on
biophysical
variables
machine
learning
according
an
FAO
land
standard
using
soybean
(Glycine
max
L.)
as
representative
crop,
aiming
provide
alternative
geographic
information
system
(GIS)-based
multicriteria
analysis.
peak
leaf
area
index
(LAI)
the
fraction
absorbed
photosynthetically
active
radiation
(FAPAR)
from
PROBA-V/Sentinel-3
data
were
calculated
ground-truth
agricultural
parcels
in
continental
Croatia
during
2015–2021.
Four
regression
algorithms,
including
random
forest
(RF),
support
vector
(SVM),
extreme
gradient
boosting
(XGB),
well
their
combination,
evaluated
LAI
FAPAR
entire
area,
with
RF
producing
highest
prediction
accuracy
R2
range
0.250–0.590.
translation
K-means
classes
performed
relative-based
approach,
ranking
five
resulting
relative
mean
sums
values.
results
proposed
approach
indicate
that
it
is
viable
major
crops,
while
minor
crops
would
require
higher
spatial
resolution,
such
vegetation
indices
Sentinel-2
imagery.
Язык: Английский
Lignocellulose‐Derived Energy Materials and Chemicals: A Review on Synthesis Pathways and Machine Learning Applications
Small Methods,
Год журнала:
2025,
Номер
unknown
Опубликована: Апрель 23, 2025
Abstract
Lignocellulose
biomass,
Earth's
most
abundant
renewable
resource,
is
crucial
for
sustainable
production
of
high–value
chemicals
and
bioengineered
materials,
especially
energy
storage.
Efficient
pretreatment
vital
to
boost
lignocellulose
conversion
bioenergy
biomaterials,
cut
costs,
broaden
its
energy–sector
applications.
Machine
learning
(ML)
has
become
a
key
tool
in
this
field,
optimizing
processes,
improving
decision‐making,
driving
innovation
valorization
This
review
explores
main
strategies
–
physical,
chemical,
physicochemical,
biological,
integrated
methods
evaluating
their
pros
cons
It
also
stresses
ML's
role
refining
these
supported
by
case
studies
showing
effectiveness.
The
examines
challenges
opportunities
integrating
ML
into
storage,
underlining
pretreatment's
importance
unlocking
lignocellulose's
full
potential.
By
blending
process
knowledge
with
advanced
computational
techniques,
work
aims
spur
progress
toward
sustainable,
circular
bioeconomy,
particularly
storage
solutions.
Язык: Английский
Trustworthy and Human Centric neural network approaches for prediction of landfill methane emission and sustainable waste management practices
Waste Management,
Год журнала:
2025,
Номер
195, С. 44 - 54
Опубликована: Янв. 30, 2025
Landfills
rank
third
among
the
anthropogenic
sources
of
methane
gas
in
atmosphere,
hence
there
is
a
need
for
greater
emphasis
on
quantification
landfill
emission
mitigating
environmental
degradation.
However,
estimation
and
prediction
challenge
as
modeling
complexity
generation
involves
different
chemical,
biological
physical
reactions.
Various
machine
learning
techniques
lacks
providing
explainability
context
addressing
uncertainties
emission.
This
work
presents
novel
artificial
neural
network
(ANN)
based
approach
enhancing
interpretation
prediction.
A
trustworthy
ANN
(TANN)
using
SHapley
Additive
exPlanations
(SHAP)
presented
this
research
improving
predicted
values
data
seven
major
producing
countries
like
India,
China,
Russia,
Indonesia,
US,
EU,
Brazil.
Further,
Human-Centric
(HCANN)
model
two
approaches:
risks
indication
physics
informed
are
developed.
The
HCANN
was
capable
scientific
principles
well-known
LandGEM
data.
results
exhibited
close
agreement
with
those
produced
by
LandGEM.
Likewise
developed
factors
production
rates
(MPR),
capture
system
efficiency
(GCSE),
monitoring
reliability
(MSR)
able
to
offer
intuitive
contextual
decision
understand
risk
associated
unmanaged
methane.
Proposed
TANN
approaches
valuable
tool
assessment
sustainable
waste
management
practices.
Язык: Английский
Industrial Hemp Finola Variety Photosynthetic, Morphometric, Biomechanical, and Yield Responses to K Fertilization Across Different Growth Stages
Agronomy,
Год журнала:
2025,
Номер
15(2), С. 496 - 496
Опубликована: Фев. 19, 2025
The
growing
interest
in
Cannabis
sativa
as
a
highly
used
crop
is
present
worldwide.
There
are
limited
data
about
the
effect
of
potassium
(K)
fertilizer
on
industrial
hemp
yield
for
dual
purposes
(seed
and
stem
production).
current
study
aimed
to
investigate
influence
adding
two
different
K
fertilizers,
KCl
K2SO4,
at
growth
stages
(flowering
ripening)
productivity
chlorophyll
fluorescence
(ChlF)
sativa,
variety
Finola.
Before
sowing,
treatments
were
applied:
K1—100
kg
ha−1
(60%
K)
K2—100
K2SO4
(52%
K,
S
17%).
OJIP
(O
stands
“origin”
(minimal
fluorescence),
P
“peak”
(maximum
J
I
inflection
points
between
O
levels)
recorded
ChlF
transients
individual
parameters
during
vegetation.
At
harvest,
morphology
(plant
height,
weight
diameter,
seed
yield),
tensile
strength,
modulus
elasticity
determined.
results
show
sensitivity
minimal
(F0)
maximal
(Fm),
electron
transport
from
QA
intersystem
acceptors
(ET0/(TR0
−
ET0)),
flux
until
PSI
(RE0/RC)
fertilization.
that
described
(ET0/RC,
ψE0,
φE0),
performance
index
absorption
basis
(PIABS,
TR0/DI0,
φP0),
dissipation
(DI0/RC),
photosystem
(φR0
δR0/(1
δR0))
had
reaction
only
stage,
indicating
change
their
activity
aging
plants.
average
height
was
67.5
cm,
diameter
0.41
cm.
sources
did
not
significantly
nor
dry
(on
12.2
t
ha−1)
1.85
ha−1).
strength
stems
highest
with
(53.32
MPa)
lowest
(49.25
MPa).
stiffness
by
5
GPa
all
treatments.
In
general,
photosynthetic
this
varied
more
than
formulations.
Moreover,
based
study,
it
can
be
recommended
use
both
dual-purpose
production
since
no
significant
found
morphometric
biomechanical
well
agronomic
parameters.
Язык: Английский
Comparative Evaluation of Ensemble Machine Learning Models for Methane Production from Anaerobic Digestion
Fermentation,
Год журнала:
2025,
Номер
11(3), С. 130 - 130
Опубликована: Март 7, 2025
This
study
provides
a
comparative
evaluation
of
several
ensemble
model
constructions
for
the
prediction
specific
methane
yield
(SMY)
from
anaerobic
digestion.
From
authors’
knowledge
based
on
existing
research,
present
their
accuracy
and
utilization
in
digestion
modeling
relative
to
individual
machine
learning
methods
is
incomplete.
Three
input
datasets
compiled
samples
using
agricultural
forestry
lignocellulosic
residues
previous
studies
were
used
this
study.
A
total
six
five
evaluated
per
dataset,
whose
was
assessed
robust
10-fold
cross-validation
100
repetitions.
Ensemble
models
outperformed
one
out
three
terms
accuracy.
They
also
produced
notably
lower
coefficients
variation
root-mean-square
error
(RMSE)
than
most
accurate
(0.031
0.393
dataset
A,
0.026
0.272
B,
0.021
0.217
AB),
being
much
less
prone
randomness
training
test
data
split.
The
optimal
generally
benefited
higher
number
included,
as
well
diversity
principles.
Since
reporting
final
fitting
single
split-sample
approach
highly
randomness,
adoption
multiple
repetitions
proposed
standard
future
studies.
Язык: Английский
Near-infrared spectroscopy as a green analytical tool for sustainable biomass characterization for biofuels and bioproducts: An overview
Bioresource Technology,
Год журнала:
2025,
Номер
433, С. 132722 - 132722
Опубликована: Май 25, 2025
Biomass,
a
widely
used
renewable
energy
source,
requires
characterization
to
optimize
biofuel
and
bioproduct
processes,
customize
feedstocks,
ensure
economic
environmental
sustainability.
Conventional
wet-chemistry
methods
for
biomass
analysis
are
slow,
expensive,
require
significant
reagents
skilled
personnel.
In
contrast,
near-infrared
(NIR)
spectroscopy,
faster,
cost-effective,
reagent-free
green
technology,
enables
non-destructive
with
minimal
sample
preparation.
This
study
provides
an
overview
of
the
fundamentals
NIR
spectroscopy
explores
its
recent
applications
analyzing
various
properties
important
industry.
The
also
critically
evaluates
challenges
opportunities
using
analysis.
review
aims
guide
future
research
rapid
high
throughput
in
industry,
supporting
United
Nations'
sustainable
development
goal
(SDG)
7:
producing
affordable
energy.
Язык: Английский
Review of energy self-circulation systems integrating biogas utilization with Powerfuels production in global livestock industry
Bioresource Technology,
Год журнала:
2024,
Номер
408, С. 131193 - 131193
Опубликована: Июль 31, 2024
Язык: Английский
Anaerobic digestion of lignocellulosic biomass: Process intensification and artificial intelligence
Renewable and Sustainable Energy Reviews,
Год журнала:
2024,
Номер
210, С. 115264 - 115264
Опубликована: Дек. 24, 2024
Язык: Английский
Exploring interactive effects of environmental and microbial factors on food waste anaerobic digestion performance: Interpretable machine learning models
Bioresource Technology,
Год журнала:
2024,
Номер
416, С. 131762 - 131762
Опубликована: Ноя. 7, 2024
Язык: Английский
A Comprehensive Evaluation of Machine Learning Algorithms for Digital Soil Organic Carbon Mapping on a National Scale
Applied Sciences,
Год журнала:
2024,
Номер
14(21), С. 9990 - 9990
Опубликована: Ноя. 1, 2024
The
aim
of
this
study
was
to
narrow
the
research
gap
ambiguity
in
which
machine
learning
algorithms
should
be
selected
for
evaluation
digital
soil
organic
carbon
(SOC)
mapping.
This
performed
by
providing
a
comprehensive
assessment
prediction
accuracy
15
frequently
used
SOC
mapping
based
on
studies
indexed
Web
Science
Core
Collection
(WoSCC),
basis
algorithm
selection
future
studies.
Two
areas,
including
mainland
France
and
Czech
Republic,
were
2514
400
samples
from
LUCAS
2018
dataset.
Random
Forest
first
ranked
(mainland)
then
Republic
regarding
accuracy;
coefficients
determination
0.411
0.249,
respectively,
accordance
with
its
dominant
appearance
previous
WoSCC.
Additionally,
K-Nearest
Neighbors
Gradient
Boosting
Machine
regression
indicated,
relative
their
frequency
WoSCC,
that
they
are
underrated
more
considered
Future
consider
areas
not
strictly
related
human-made
administrative
borders,
as
well
interpretable
ensemble
approaches.
Язык: Английский