Ecological Indicators,
Год журнала:
2022,
Номер
146, С. 109846 - 109846
Опубликована: Дек. 30, 2022
In
Africa,
vegetation
is
important
for
the
protection
of
species
habitats,
maintaining
local
livelihoods,
and
existence
wildlife.
A
comprehensive
evaluation
dynamics
using
solar-induced
fluorescence
(SIF)
needed
to
acquire
information
understand
current
situation
how
ecosystems
react
human
activities
climate
change,
as
well
conservation
planning.
The
research's
purpose
was
detect
in
Africa
from
2000
2017
global,
OCO-2-based
SIF
(GOSIF)
various
datasets,
analyze
factors
influencing
changes.
main
findings
revealed
that:
(1)
patterns
this
study
showed
that
forests
experienced
more
expansions
than
croplands,
grasslands,
shrubland,
sparse
vegetation,
based
on
Land
Use
Cover
Change
(LUCC)
per
type.
(2)
According
SIF,
decreasing
area
accounts
29.4%
total
region
while
expanding
70.6%.
(3)
Hurst
exponent
summary
exhibited
majority
studied
variations
are
consistent
accounted
79.7%.
(4)
Based
residual,
we
discovered
climatic
might
be
responsible
greening
trend
grassland.
(5)
Boosted
Regression
Trees
(BRT)
during
period,
Vapor
pressure
deficit
(VPD)
temperature
had
a
greater
impact
other
factors.
Our
can
aid
development
appropriate
management
concepts
or
strategies
help
restoration
Africa.
ISPRS Journal of Photogrammetry and Remote Sensing,
Год журнала:
2022,
Номер
195, С. 408 - 417
Опубликована: Дек. 27, 2022
Vegetation
indices
computed
from
spectral
signatures
are
vastly
used
for
monitoring
the
terrestrial
biosphere.
Indices
convenient
proxies
canopy
structure,
and
leaf
pigment
content,
consequently
to
estimate
photosynthetic
activity
of
vegetation.
Owing
its
simplicity,
celebrated
Normalized
Difference
Index
(NDVI)
has
been
as
a
proxy
greenness
structure.
Unfortunately,
NDVI
can
only
capture
linear
relationships
near
infrared
(NIR)
-
red
difference
with
parameter
interest.
To
account
higher-order
relations
between
channels,
kernel
(kNDVI)
was
proposed
in
(Camps-Valls
et
al.,
2021).
In
this
work,
we
give
useful
prescriptions
proper
use
show
good
performance
wider
set
applications.
We
discuss
characteristics
index
like
boundedness,
low
error
propagation.
Furthermore,
empirical
evidence
estimating
in-situ
vegetation
parameters
(leaf
area
(LAI),
gross
primary
productivity
(GPP),
leaf,
chlorophyll
green
total
LAI
fraction
absorbed
photosynthetically
active
radiation
(fAPAR))
well
estimation
latent
heat
at
flux
tower
level.
confirm
generally
(correlation
coefficient
kNDVI
content
is
0.919
0.933
maize
over
two
sites,
correlation
carotenoid,
0.816,
0.520
0.579
three
forest
sites)
highlight
convenience
ecosystems.
foster
adoption
new
family
index,
provide
source
code
6
programming
languages
efficient
implementations
Google
Earth
Engine
(GEE)
platform
https://github.com/IPL-UV/kNDVI.
Global Change Biology,
Год журнала:
2022,
Номер
28(16), С. 4794 - 4806
Опубликована: Апрель 22, 2022
Earth's
ecosystems
are
increasingly
threatened
by
"hot
drought,"
which
occurs
when
hot
air
temperatures
coincide
with
precipitation
deficits,
intensifying
the
hydrological,
physiological,
and
ecological
effects
of
drought
enhancing
evaporative
losses
soil
moisture
(SM)
increasing
plant
stress
due
to
higher
vapor
pressure
deficit
(VPD).
Drought-induced
reductions
in
gross
primary
production
(GPP)
exert
a
major
influence
on
terrestrial
carbon
sink,
but
extent
hotter
atmospherically
drier
conditions
will
amplify
deficits
cycle
remains
largely
unknown.
During
summer
autumn
2020,
U.S.
Southwest
experienced
one
most
intense
droughts
record,
record-low
record-high
temperature
VPD
across
region.
Here,
we
use
this
natural
experiment
evaluate
GPP
further
decompose
those
negative
anomalies
into
their
constituent
meteorological
hydrological
drivers.
We
found
122
Tg
C
(>25%)
reduction
below
2015-2019
mean,
far
lowest
regional
over
Soil
Moisture
Active
Passive
satellite
record.
Roughly
half
estimated
loss
was
attributable
low
SM
(likely
combination
warming-enhanced
depletion),
record-breaking
amplified
GPP,
contributing
roughly
40%
anomaly.
Both
very
likely
continue
next
century,
leading
more
frequent
substantially
drought-induced
reductions.
Global Change Biology,
Год журнала:
2023,
Номер
29(11), С. 2893 - 2925
Опубликована: Фев. 18, 2023
Abstract
Although
our
observing
capabilities
of
solar‐induced
chlorophyll
fluorescence
(SIF)
have
been
growing
rapidly,
the
quality
and
consistency
SIF
datasets
are
still
in
an
active
stage
research
development.
As
a
result,
there
considerable
inconsistencies
among
diverse
at
all
scales
widespread
applications
them
led
to
contradictory
findings.
The
present
review
is
second
two
companion
reviews,
data
oriented.
It
aims
(1)
synthesize
variety,
scale,
uncertainty
existing
datasets,
(2)
sector
ecology,
agriculture,
hydrology,
climate,
socioeconomics,
(3)
clarify
how
such
inconsistency
superimposed
with
theoretical
complexities
laid
out
(Sun
et
al.,
2023)
may
impact
process
interpretation
various
contribute
inconsistent
We
emphasize
that
accurate
functional
relationships
between
other
ecological
indicators
contingent
upon
complete
understanding
uncertainty.
Biases
uncertainties
observations
can
significantly
confound
their
respond
environmental
variations.
Built
syntheses,
we
summarize
gaps
current
observations.
Further,
offer
perspectives
on
innovations
needed
help
improve
informing
ecosystem
structure,
function,
service
under
climate
change,
including
enhancing
in‐situ
capability
especially
“data
desert”
regions,
improving
cross‐instrument
standardization
network
coordination,
advancing
by
fully
harnessing
theory
data.
Summary
A
new
proliferation
of
optical
instruments
that
can
be
attached
to
towers
over
or
within
ecosystems,
‘proximal’
remote
sensing,
enables
a
comprehensive
characterization
terrestrial
ecosystem
structure,
function,
and
fluxes
energy,
water,
carbon.
Proximal
sensing
bridge
the
gap
between
individual
plants,
site‐level
eddy‐covariance
fluxes,
airborne
spaceborne
by
providing
continuous
data
at
high‐spatiotemporal
resolution.
Here,
we
review
recent
advances
in
proximal
for
improving
our
mechanistic
understanding
plant
processes,
model
development,
validation
current
upcoming
satellite
missions.
We
provide
best
practices
availability
metadata
sensing:
spectral
reflectance,
solar‐induced
fluorescence,
thermal
infrared
radiation,
microwave
backscatter,
LiDAR.
Our
paper
outlines
steps
necessary
making
these
streams
more
widespread,
accessible,
interoperable,
information‐rich,
enabling
us
address
key
ecological
questions
unanswerable
from
space‐based
observations
alone
and,
ultimately,
demonstrate
feasibility
technologies
critical
local
global
ecology.
Land,
Год журнала:
2025,
Номер
14(3), С. 598 - 598
Опубликована: Март 12, 2025
As
global
climate
change
intensifies,
its
impact
on
the
ecological
environment
is
becoming
increasingly
pronounced.
Among
these,
land
surface
temperature
(LST)
and
vegetation
cover
status,
as
key
indicators,
have
garnered
widespread
attention.
This
study
analyzes
spatiotemporal
dynamics
of
LST
Kernel
Normalized
Difference
Vegetation
Index
(KNDVI)
in
11
provinces
along
Yangtze
River
their
response
to
based
MODIS
Terra
satellite
data
from
2000
2020.
The
linear
regression
showed
a
significant
KNDVI
increase
0.003/year
(p
<
0.05)
rise
0.065
°C/year
0.01).
Principal
Component
Analysis
(PCA)
explained
74.5%
variance,
highlighting
dominant
influence
urbanization.
K-means
clustering
identified
three
regional
patterns,
with
Shanghai
forming
distinct
group
due
low
variability.
Generalized
Additive
Model
(GAM)
analysis
revealed
nonlinear
LST–KNDVI
relationship,
most
evident
Hunan,
where
cooling
effects
weakened
beyond
threshold
0.25.
Despite
0.07
increase,
high-temperature
areas
Chongqing
Jiangsu
expanded
by
over
2500
km2,
indicating
limited
mitigation.
reveals
complex
interaction
between
KNDVI,
which
may
provide
scientific
basis
for
development
management
adaptation
strategies.
Forests,
Год журнала:
2023,
Номер
14(3), С. 620 - 620
Опубликована: Март 20, 2023
The
Yellow
River
Basin
(YRB)
is
a
fundamental
ecological
barrier
in
China
and
one
of
the
regions
where
environment
relatively
fragile.
Studying
spatio-temporal
variations
vegetation
coverage
YRB
their
driving
factors
through
long-time-series
dataset
great
significance
to
eco-environmental
construction
sustainable
development
YRB.
In
this
study,
we
sought
characterize
variation
its
climatic
from
2001
2020
by
constructing
new
kernel
normalized
difference
index
(kNDVI)
based
on
MOD13
A1
V6
data
Google
Earth
Engine
(GEE)
platform.
Using
Theil–Sen
median
trend
analysis,
Mann–Kendall
test,
Hurst
exponent,
investigated
characteristics
future
trends
coverage.
were
obtained
via
partial
correlation
analysis
complex
associations
between
kNDVI
both
temperature
precipitation.
results
reveal
following:
spatial
distribution
pattern
showed
that
was
high
southeast
low
northwest.
Vegetation
fluctuated
2020,
with
main
significant
increasing
growth
at
rate
0.0995/5a.
response
strong
YRB,
stronger
precipitation
than
temperature.
Additionally,
found
be
non-climatic
factors,
which
mainly
distributed
Henan,
southern
Shaanxi,
Shanxi,
western
Inner
Mongolia,
Ningxia,
eastern
Gansu.
areas
driven
northern
Shandong,
Qinghai,
Gansu,
northeastern
Sichuan.
Our
findings
have
implications
for
ecosystem
restoration
Agriculture,
Год журнала:
2024,
Номер
14(6), С. 794 - 794
Опубликована: Май 22, 2024
The
accurate
prediction
of
crop
yields
is
crucial
for
enhancing
agricultural
efficiency
and
ensuring
food
security.
This
study
assesses
the
performance
CNN-LSTM-Attention
model
in
predicting
maize,
rice,
soybeans
Northeast
China
compares
its
effectiveness
with
traditional
models
such
as
RF,
XGBoost,
CNN.
Utilizing
multi-source
data
from
2014
to
2020,
which
include
vegetation
indices,
environmental
variables,
photosynthetically
active
parameters,
our
research
examines
model’s
capacity
capture
essential
spatial
temporal
variations.
integrates
Convolutional
Neural
Networks,
Long
Short-Term
Memory,
an
attention
mechanism
effectively
process
complex
datasets
manage
non-linear
relationships
within
data.
Notably,
explores
potential
using
kNDVI
multiple
crops,
highlighting
effectiveness.
Our
findings
demonstrate
that
advanced
deep-learning
significantly
enhance
yield
accuracy
over
methods.
We
advocate
incorporation
sophisticated
technologies
practices,
can
substantially
improve
production
strategies.
Forests,
Год журнала:
2024,
Номер
15(2), С. 339 - 339
Опубликована: Фев. 9, 2024
In
the
context
of
global
warming,
frequent
occurrence
drought
has
become
one
main
reasons
affecting
loss
gross
primary
productivity
(GPP)
terrestrial
ecosystems.
Under
influence
human
activities,
vegetation
greening
trend
Loess
Plateau
increased
significantly.
Therefore,
it
is
great
significance
to
study
response
GPP
in
under
trend.
Here,
we
comprehensively
assessed
ability
indices
(VIs)
and
solar-induced
chlorophyll
fluorescence
(SIF)
capture
changes
at
different
seasonal
scales
during
drought.
Specifically,
utilized
three
indices:
normalized
difference
index
(NDVI),
near-infrared
reflectance
(NIRV),
kernel
NDVI
(kNDVI),
determined
period
2001
based
on
standardized
precipitation
evapotranspiration
(SPEI)
soil
moisture
(SSMI).
Moreover,
anomalies
VIs
SIF
relationship
with
were
compared.
The
results
showed
that
both
able
as
well
normal
years.
Overall,
captured
better
due
water
heat
stress
compared
VIs.
Across
time
scales,
strongest
(meanR2
=
0.85),
followed
by
NIRV
0.84),
0.76),
kNDVI
0.74),
suggesting
more
sensitive
physiological
vegetation.
Notably,
performed
best
sparse
0.85).
drought,
less
productive
land
classes;
superior
use
class
increased.
addition,
correlated
0.50)
than
other
anomalies.
future,
efforts
integrate
respective
strengths
SIF,
NIRV,
will
improve
our
understanding
changes.