Annals of GIS,
Journal Year:
2024,
Volume and Issue:
30(1), P. 1 - 14
Published: Jan. 2, 2024
The
Annual
Meeting
of
the
American
Association
Geographers
(AAG)
in
2023
marked
a
five-year
milestone
since
first
Geospatial
Artificial
Intelligence
(GeoAI)
Symposium
was
held
at
AAG
2018.
In
past
five
years,
progress
has
been
made
while
open
questions
remain.
this
context,
we
organized
an
panel
and
invited
panellists
to
discuss
advances
limitations
GeoAI
research.
commended
successes,
such
as
development
spatially
explicit
models,
production
large-scale
geographic
datasets,
use
address
real-world
problems.
also
shared
their
thoughts
on
current
research,
which
were
considered
opportunities
engage
theories
geography,
enhance
model
explainability,
quantify
uncertainty,
improve
generalizability.
This
article
summarizes
presentations
from
provides
after-panel
organizers.
We
hope
that
can
make
these
more
accessible
interested
readers
help
stimulate
new
ideas
for
future
breakthroughs.
Atmosphere,
Journal Year:
2024,
Volume and Issue:
15(6), P. 671 - 671
Published: May 31, 2024
With
the
ongoing
advancement
of
globalization
significantly
impacting
ecological
environment,
continuous
rise
in
Land
Surface
Temperature
(LST)
is
increasingly
jeopardizing
human
production
and
living
conditions.
This
study
aims
to
investigate
seasonal
variations
LST
its
driving
factors
using
mathematical
models.
Taking
Wuhan
Urban
Agglomeration
(WHUA)
as
a
case
study,
it
explores
characteristics
employs
Principal
Component
Analysis
(PCA)
categorize
factors.
Additionally,
compares
traditional
models
with
machine-learning
select
optimal
model
for
this
investigation.
The
main
conclusions
are
follows.
(1)
WHUA’s
exhibits
significant
differences
among
seasons
demonstrates
distinct
spatial-clustering
different
seasons.
(2)
Compared
geographic
spatial
models,
Extreme
Gradient
Boosting
(XGBoost)
shows
better
explanatory
power
investigating
effects
LST.
(3)
Human
Activity
(HA)
dominates
influence
throughout
year
positive
correlation
LST;
Physical
Geography
(PG)
negative
Climate
Weather
(CW)
show
similar
variation
PG,
peaking
transition;
Landscape
Pattern
(LP)
weak
LST,
winter
while
being
relatively
inconspicuous
summer
transition.
Finally,
through
comparative
analysis
multiple
constructs
framework
exploring
features
aiming
provide
references
guidance
development
WHUA
regions.
International Journal of Information Technology,
Journal Year:
2024,
Volume and Issue:
16(3), P. 1279 - 1292
Published: Jan. 2, 2024
Abstract
The
big
Artificial
General
Intelligence
models
inspire
hot
topics
currently.
black
box
problems
of
(AI)
still
exist
and
need
to
be
solved
urgently,
especially
in
the
medical
area.
Therefore,
transparent
reliable
AI
with
small
data
are
also
urgently
necessary.
To
build
a
trustable
model
data,
we
proposed
prior
knowledge-integrated
transformer
model.
We
first
acquired
knowledge
using
Shapley
Additive
exPlanations
from
various
pre-trained
machine
learning
models.
Then,
used
construct
compared
our
Feature
Tokenization
Transformer
other
classification
tested
on
three
open
datasets
one
non-open
public
dataset
Japan
confirm
feasibility
methodology.
Our
results
certified
that
perform
better
(1%)
than
general
Meanwhile,
methodology
identified
self-attention
factors
is
nearly
same,
which
needs
explored
future
work.
Moreover,
research
inspires
endeavors
exploring
Geoscience Frontiers,
Journal Year:
2024,
Volume and Issue:
15(4), P. 101800 - 101800
Published: Feb. 2, 2024
Hydro-morphological
processes
(HMP,
any
natural
phenomenon
contained
within
the
spectrum
defined
between
debris
flows
and
flash
floods)
are
globally
occurring
hazards
which
pose
great
threats
to
our
society,
leading
fatalities
economical
losses.
For
this
reason,
understanding
dynamics
behind
HMPs
is
needed
aid
in
hazard
risk
assessment.
In
work,
we
take
advantage
of
an
explainable
deep
learning
model
extract
global
local
interpretations
HMP
occurrences
across
whole
Chinese
territory.
We
use
a
neural
network
architecture
interpret
results
through
spatial
pattern
SHAP
values.
doing
so,
can
understand
prediction
on
hierarchical
basis,
looking
at
how
predictor
set
controls
overall
susceptibility
as
well
same
level
single
mapping
unit.
Our
accurately
predicts
with
AUC
values
measured
ten-fold
cross-validation
ranging
0.83
0.86.
This
predictive
performance
attests
for
excellent
skill.
The
main
difference
respect
traditional
statistical
tools
that
latter
usually
lead
clear
interpretation
expense
high
performance,
otherwise
reached
via
machine/deep
solutions,
though
interpretation.
recent
development
AI
key
combine
both
strengths.
explore
combination
context
modeling.
Specifically,
demonstrate
extent
one
enter
new
data-driven
interpretation,
supporting
decision-making
process
disaster
mitigation
prevention
actions.
Remote Sensing,
Journal Year:
2024,
Volume and Issue:
16(4), P. 682 - 682
Published: Feb. 14, 2024
As
a
region
susceptible
to
the
impacts
of
climate
change,
evaluating
temporal
and
spatial
variations
in
ecological
environment
quality
(EEQ)
potential
influencing
factors
is
crucial
for
ensuring
security
Tibetan
Plateau.
This
study
utilized
Google
Earth
Engine
(GEE)
platform
construct
Remote
Sensing-based
Ecological
Index
(RSEI)
examined
dynamics
Plateau’s
EEQ
from
2000
2022.
The
findings
revealed
that
RSEI
Plateau
predominantly
exhibited
slight
degradation
trend
2022,
with
multi-year
average
0.404.
Utilizing
SHAP
(Shapley
Additive
Explanation)
interpret
XGBoost
(eXtreme
Gradient
Boosting),
identified
natural
as
primary
influencers
on
Plateau,
temperature,
soil
moisture,
precipitation
variables
exhibiting
higher
values,
indicating
their
substantial
contributions.
interaction
between
temperature
showed
positive
effect
RSEI,
value
increasing
rising
precipitation.
methodology
results
this
could
provide
insights
comprehensive
understanding
monitoring
dynamic
evolution
amidst
context
change.