One-dimensional decoupled convolutional autoencoder with sparse self-attention mechanism for process monitoring
Process Safety and Environmental Protection,
Год журнала:
2025,
Номер
unknown, С. 107156 - 107156
Опубликована: Апрель 1, 2025
Язык: Английский
Forecasting Dissolved Gas Concentration in Transformer Oil Using the AdaSTDM
IEEJ Transactions on Electrical and Electronic Engineering,
Год журнала:
2025,
Номер
unknown
Опубликована: Апрель 21, 2025
Abstract
Accurately
forecasting
dissolved
gas
concentration
(DGC)
in
transformer
oil
is
crucial
for
ensuring
the
safety
and
reliability
of
power
transformers
facilitating
early
anomaly
warning.
Current
methods
DGC
demonstrate
limited
effectiveness
non‐stationary
characteristics
with
data‐distribution
shifts.
To
address
this,
this
paper
presents
a
novel
adaptive
segmented
temporal
distribution
matching
(AdaSTDM)
model,
consisting
Toeplitz
inverse
covariance‐based
clustering
(TICC)
algorithm
time
(TDM)
algorithm.
effectively
adapt
to
different
state
data,
TICC
used
segment
domain
sequence,
Jensen‐Shannon
(JS)
divergence
as
an
indicator
evaluate
segmentation
results.
The
TDM
module
designed
mitigate
mismatches
by
learning
common
knowledge
among
states.
Experimental
results
across
two
real‐world
cases
illustrate
that
proposed
AdaSTDM
outperforms
various
advanced
predicting
both
stationary
data.
©
2025
Institute
Electrical
Engineers
Japan.
Published
Wiley
Periodicals
LLC.
Язык: Английский
Forecasting in-core power distributions in nuclear power plants via a spatial–temporal hierarchical-directed network
Progress in Nuclear Energy,
Год журнала:
2025,
Номер
186, С. 105795 - 105795
Опубликована: Май 10, 2025
Язык: Английский
Tool State Recognition Based on POGNN-GRU under Unbalanced Data
Sensors,
Год журнала:
2024,
Номер
24(16), С. 5433 - 5433
Опубликована: Авг. 22, 2024
Accurate
recognition
of
tool
state
is
important
for
maximizing
life.
However,
the
sensor
data
collected
in
real-life
scenarios
has
unbalanced
characteristics.
Additionally,
although
graph
neural
networks
(GNNs)
show
excellent
performance
feature
extraction
spatial
dimension
data,
it
difficult
to
extract
features
temporal
efficiently.
Therefore,
we
propose
a
method
based
on
Pruned
Optimized
Graph
Neural
Network-Gated
Recurrent
Unit
(POGNN-GRU)
under
data.
Firstly,
design
Improved-Majority
Weighted
Minority
Oversampling
Technique
(IMWMOTE)
by
introducing
an
adaptive
noise
removal
strategy
and
improving
MWMOTE
alleviate
problem
Subsequently,
POG
construction
multi-scale
multi-metric
basis
Gaussian
kernel
weight
function
solve
one-sided
description
single
metric
basis.
Then,
construct
POGNN-GRU
model
deeply
mine
better
identify
tool.
Finally,
validation
ablation
experiments
PHM
2010
HMoTP
datasets
that
proposed
outperforms
other
models
terms
identification,
highest
accuracy
improves
1.62%
1.86%
compared
with
corresponding
optimal
baseline
model.
Язык: Английский
Application of SPEA2-MMBB for Distributed Fault Diagnosis in Nuclear Power System
Processes,
Год журнала:
2024,
Номер
12(12), С. 2620 - 2620
Опубликована: Ноя. 21, 2024
Accurate
fault
diagnosis
in
nuclear
power
systems
is
essential
for
ensuring
reactor
stability,
reducing
the
risk
of
potential
faults,
enhancing
system
reliability,
and
maintaining
operational
safety.
Traditional
diagnostic
methods,
especially
those
based
on
single-system
approaches,
struggle
to
address
complexities
composite
faults
highly
coupled
data.
In
this
paper,
we
introduce
a
distributed
method
that
leverages
Strength
Pareto
Evolutionary
Algorithm
2
(SPEA2)
multi-objective
optimization
modified
MobileNetV3
neural
network
with
Bottleneck
Attention
Module
(MMBB).
The
SPEA2
algorithm
used
optimize
sensor
feature
selection,
data
are
then
input
into
MMBB
model
training.
outputs
accuracy
rates
each
subsystem
overall
system,
which
subsequently
as
targets
guide
refining
selection
process
diagnosis.
experimental
results
demonstrate
significantly
enhances
accuracy,
an
average
98.73%,
achieves
comprehensive
95.22%,
indicating
its
superior
performance
compared
traditional
network-based
approaches.
Язык: Английский