Publication Date:
2017
abstract:
Disruptive
events still represent
a
serious concern
for the
preservation
of
the structural
integrity
of large tokamaks
.
In the last
years,
thanks to
ever increasing computing resources,
data
-
driven approaches to predict disruptions
have been continuously developed
,
dealing with
ever
larger databases
and with data of different machines
. The development of disruptions
multi
-
machine
database
s
[
1
]
is particularly valuable to
building a common base for
modelling, to further improving
the knowledge of the
underlying
disruption
physics
, and
to
extrapolate to
larger next
-
step fusion devices, such as ITER and DEMO
.
In this perspective,
for the first time a tool
(
DIS_tool
)
[2
]
to support the construction of a reliable and
standardized
disruption database has been developed and applied to JET and ASDEX
Upgrade
disruptions
data.
B
y
processing multiple diagnostics,
DIS_tool
is able to
detect
fast transient events
depicting
the disruptive process, such as thermal quenches and current spikes,
and
to
comput
e
automatically
characteristic
times
and parameters of interest
.
The detection
is based on
normalized
thresholds
and the algorithm
is
parameterized in such a way
to run
calculations
regardless of
the characteristic
s
of the specific
machine
.
This paper will report the adva
nces in
the development of the tool, describing the extension and the preliminary analysis for TCV, a
medium
-
size machine equipped with a carbon wall and cha
racterized by extreme shaping
versatility. A common framework to develop a "standardized" multi
-
mac
hine disruption
database will be discussed analysing how the variability in terms of machine size, control and
experimental programs can affect the disruptive process itself, as well as the subsequent
definition of the characteristic parameters.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Tokamak Configuration Variable; TCV; TCV disruptions
List of contributors: