Advances in healthcare information systems and administration book series,
Journal Year:
2024,
Volume and Issue:
unknown, P. 269 - 278
Published: Nov. 22, 2024
The
integration
of
AI
in
physical
remedy
is
revolutionizing
treatment
modalities
by
unifying
Eastern
and
Western
approaches
to
recuperation.
This
composition
examines
the
operation
technologies,
similar
engine
literacy
real-time
data
analytics,
enhancing
practices.
primarily
focuses
on
biomechanical
duties
substantiation-grounded
styles,
while
punctuate
holistic
ways
that
manipulate
body-mind
connection.
By
using
AI,
clinicians
can
enhance
estimations,
epitomize
recuperation
plans,
objectively
charge
traditional
curatives
like
acupuncture
Tai
Chi.
Despite
pledge
expostulations
sequestration,
algorithm
translucency,
integrating
different
sources
remain.
underscores
significance
a
clearheaded
path
combines
puissance
both
optimize
strategies.
Nature Communications,
Journal Year:
2025,
Volume and Issue:
16(1)
Published: Feb. 24, 2025
In
recent
years,
artificial
intelligence
(AI)
has
deeply
impacted
various
fields,
including
Earth
system
sciences,
by
improving
weather
forecasting,
model
emulation,
parameter
estimation,
and
the
prediction
of
extreme
events.
The
latter
comes
with
specific
challenges,
such
as
developing
accurate
predictors
from
noisy,
heterogeneous,
small
sample
sizes
data
limited
annotations.
This
paper
reviews
how
AI
is
being
used
to
analyze
climate
events
(like
floods,
droughts,
wildfires,
heatwaves),
highlighting
importance
creating
accurate,
transparent,
reliable
models.
We
discuss
hurdles
dealing
data,
integrating
real-time
information,
deploying
understandable
models,
all
crucial
steps
for
gaining
stakeholder
trust
meeting
regulatory
needs.
provide
an
overview
can
help
identify
explain
more
effectively,
disaster
response
communication.
emphasize
need
collaboration
across
different
fields
create
solutions
that
are
practical,
understandable,
trustworthy
enhance
readiness
risk
reduction.
Artificial
Intelligence
transforming
study
like
helping
overcome
challenges
integration.
review
article
highlights
models
improve
response,
communication
trust.
Global
food
security
is
seriously
threatened
by
climate
change,
which
calls
for
creative
agricultural
solutions.
However,
little
known
about
how
different
smart
technologies
are
integrated
to
enhance
security.
As
a
strategic
reaction
these
difficulties,
this
review
investigates
the
incorporation
of
remote
sensing
(RS)
as
well
artificial
intelligence
(AI)
into
climate-smart
agriculture
(CSA).
This
demonstrates
advances
can
improve
resilience,
productivity,
and
sustainability
utilizing
AI's
capacity
predictive
analytics,
crop
modelling,
precision
agriculture,
along
with
RS's
strengths
in
projections,
land
management,
continuous
surveillance.
Several
important
tactics
were
covered,
such
combining
AI
RS
regulate
risks,
maximize
resource
utilization,
practice
choices.
The
also
discusses
issues
like
policy
frameworks,
building,
accessibility
that
prevent
from
being
widely
adopted.
highlights
further
CSA
offers
insights
they
help
ensure
systems
remain
secure
changing
climates.
IntechOpen eBooks,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Jan. 20, 2025
The
integration
of
Large
Language
Models
(LLMs),
artificial
intelligence
(AI),
and
programming
languages
such
as
Python
R
has
revolutionized
environmental
monitoring.
These
technologies
enhance
data
analysis,
automate
reporting,
improve
communication
among
stakeholders,
enabling
more
informed
timely
decision-making.
AI-driven
tools
facilitate
a
wide
range
monitoring
activities,
including
pollution
tracking,
species
conservation,
climate
change
by
increasing
the
accuracy
speed
processing.
predictive
capabilities
AI
are
essential
for
forecasting
conditions
trends,
supporting
development
effective
policies
actions.
Additionally,
aids
in
regulatory
compliance
continuously
analyzing
real-time
data,
alerting
authorities
to
potential
violations.
Community
engagement
is
also
enhanced
makes
accessible
understandable,
fostering
greater
public
awareness
participation
conservation
efforts.
Despite
these
advancements,
challenges
privacy,
model
bias,
interpretability,
quality
must
be
addressed
fully
leverage
technologies.
As
AI,
Python,
continue
evolve,
their
applications
sciences
expected
significantly
contribute
sustainable
efforts
globally.
Water,
Journal Year:
2024,
Volume and Issue:
16(22), P. 3328 - 3328
Published: Nov. 19, 2024
Assessing
diverse
parameters
like
water
quality,
quantity,
and
occurrence
of
hydrological
extremes
their
management
is
crucial
to
perform
efficient
resource
(WRM).
A
successful
WRM
strategy
requires
a
three-pronged
approach:
monitoring
historical
data,
predicting
future
trends,
taking
controlling
measures
manage
risks
ensure
sustainability.
Artificial
intelligence
(AI)
techniques
leverage
these
knowledge
fields
single
theme.
This
review
article
focuses
on
the
potential
AI
in
two
specific
areas:
supply-side
demand-side
measures.
It
includes
investigation
applications
leak
detection
infrastructure
maintenance,
demand
forecasting
supply
optimization,
treatment
desalination,
quality
pollution
control,
parameter
calibration
optimization
applications,
flood
drought
predictions,
decision
support
systems.
Finally,
an
overview
selection
appropriate
suggested.
The
nature
adoption
investigated
using
Gartner
hype
cycle
curve
indicated
that
learning
application
has
advanced
different
stages
maturity,
big
data
reach
plateau
productivity.
also
delineates
pathways
expedite
integration
AI-driven
solutions
harness
transformative
capabilities
for
protection
global
resources.
Water,
Journal Year:
2025,
Volume and Issue:
17(9), P. 1384 - 1384
Published: May 4, 2025
Evapotranspiration
(ET)
has
a
significant
role
in
various
natural
and
human
systems,
such
as
water
cycle
balance,
climate
regulation,
ecosystem
health,
agriculture,
hydrological
cycle,
resource
management,
studies.
Among
approaches
that
are
employed
for
estimating
ET,
the
Penman–Monteith
equation
is
known
widely
accepted
reference
approach.
However,
extensive
data
requirement
of
this
method
crucial
challenge
limits
its
usage,
particularly
data-scarce
regions.
Therefore,
an
alternative
approach,
artificial
intelligence
(AI)
models
have
gained
prominence
evapotranspiration
because
their
capacity
to
handle
complicated
relationships
between
meteorological
variables
loss
processes.
These
leverage
large
datasets
advanced
algorithms
provide
accurate
timely
ET
predictions.
The
current
research
aims
review
previous
studies
addressing
application
AI
model
modeling
under
four
main
categories:
neuron-based,
tree-based,
kernel-based,
hybrid
models.
results
study
indicated
traditional
like
(PM)
require
input
data,
while
AI-based
offer
promising
alternatives
due
ability
complex
nonlinear
relationships.
Despite
potential,
face
challenges
overfitting,
interpretability,
inconsistent
variable
selection,
lack
integration
with
physical
processes,
highlighting
need
standardized
configurations,
better
pre-processing
techniques,
incorporation
remote
sensing
data.
Journal of Leadership & Organizational Studies,
Journal Year:
2025,
Volume and Issue:
unknown
Published: March 28, 2025
‘Wicked’
problems
are
among
today's
most
complex
and
pressing
issues.
Examples
of
wicked
climate
change
sustainability,
as
well
other
that
have
critical
implications
for
a
wide
range
stakeholders,
including
organizations
their
leaders.
Despite
growing
body
work
on
problems,
solutions
remain
elusive,
underscoring
need
new
innovative
approaches.
Recent
technological
advances
creating
opportunities
to
‘untangle’
by
combining
the
use
artificial
intelligence
with
scenarios.
The
purpose
this
conceptual
paper
is
therefore
present
framework
dealing
more
effectively
strengthening
utility
our
responses
them.
first
task
define
explore
concept
‘wicked’
problem
in
order
identify
suitable
analytic
entry
points.
This
results
proposed
typology
problems.
Next,
drawing
from
literature,
set
relevant
AI
capabilities
synthesized.
Their
applicability
discussed
then
operationalized
using
sequential
steps
risk
management
process
framework.
Using
focal
issue,
it
demonstrated
combined
scenarios
synergistic,
leaving
us
better
prepared
tackle
challenges
concludes
cautionary
words,
about
risks
inherent
AI.
These
particular
significance
leaders
roles
they
should
play.