Optimizing Demand Forecasting Method with Support Vector Regression for Improved Inventory Planning
Tryantomo Lokhilmahful Palgunadi,
No information about this author
Rina Fitriana,
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Anik Nur Habyba
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et al.
Jurnal Optimasi Sistem Industri,
Journal Year:
2025,
Volume and Issue:
23(2), P. 149 - 166
Published: Jan. 31, 2025
Problems
arising
from
suboptimal
production
planning
can
cause
inventory
management
to
be
less
effective
and
efficient
in
the
company.
The
lack
of
integrated
presentation
information
also
causes
efficiency
making
decisions.
This
study
aims
obtain
best
kernel
function
forecasting
model
by
predicting
ground
rod
sales
using
Support
Vector
Regression
(SVR)
method
order
determine
level
accuracy
results
future
which
are
presented
an
optimal
data
visualization.
problem-solving
is
done
with
method,
consists
linear
functions,
polynomial
radial
basis
(RBF)
functions
Grid
Search
Algorithm.
Based
on
parameter
search
that
has
been
grid
algorithm,
it
concluded
a
value
C
=
100
ε
10-3.
this
MAPE
training
testing
2.048%
1.569%,
where
smallest
compared
other
two
functions.
After
getting
model,
was
carried
out
within
five
months,
obtaining
average
6,647
monthly
pieces.
historical
reviewed
visualization
Business
Intelligence
so
well
exposed,
shows
increase
every
month.
Language: Английский
TBM performance prediction based on XGBoost models: a case study of the ghomrud water conveyance tunnel (Lots 3 and 4)
Bulletin of Engineering Geology and the Environment,
Journal Year:
2025,
Volume and Issue:
84(6)
Published: May 14, 2025
Language: Английский
Experimental and theoretical analysis of charge length on single-hole vibration amplitude from underground deep-hole blasting
Yonggang Gou,
No information about this author
M. Ye,
No information about this author
Zhi Yu
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et al.
International Journal of Rock Mechanics and Mining Sciences,
Journal Year:
2024,
Volume and Issue:
182, P. 105876 - 105876
Published: Aug. 28, 2024
Language: Английский
Measurement and Prediction of Blast-Induced Flyrock Distance Using Unmanned Aerial Vehicles and Metaheuristic-Optimized ANFIS Neural Networks
Hoang Nguyen,
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Nguyen Van Thieu
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Natural Resources Research,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Dec. 21, 2024
Language: Английский
Adaptive Weighted Multi-kernel Learning for Blast-Induced Flyrock Distance Prediction
Ruixuan Zhang,
No information about this author
Yuefeng Li,
No information about this author
Yilin Gui
No information about this author
et al.
Rock Mechanics and Rock Engineering,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Sept. 25, 2024
Abstract
In
the
field
of
civil
and
mining
engineering,
blasting
operations
are
widely
frequently
used
for
rock
excavation,
However,
some
undesirable
environmental
problems
induced
by
cannot
be
ignored.
Blast-induced
flyrock
is
one
important
issue
operation,
which
needs
to
well
predicted
identify
zone’s
safety
zone.
This
study
introduces
an
adaptive
weighted
multi-kernel
learning
model
(AW-MKL)
provide
accurate
prediction
blast-induced
distance
in
Sungun
Copper
Mine
site.
The
proposed
uses
a
combination
(MKL)
approach
weighting
strategy
based
on
Euclidean
modified
local
outlier
factor
(MLOF)
maximally
improve
predictive
ability
kernel
ridge
regression
(KRR).
To
demonstrate
superiority
approach,
six
machine
models
were
developed
as
comparisons,
i.e.,
KRR,
RF,
GBDT,
SVM,
M5
Tree,
MARS
AdaBoost.
outcomes
method
achieved
highest
accuracy
testing
phase,
with
RMSE
2.05,
MAE
0.98
VAF
99.92,
confirmed
strong
capability
AW-MKL
predicting
distance.
Language: Английский