Data di Pubblicazione:
2018
Abstract:
The instrumented calorimeter STRIKE (Short-Time Retractable Instrumented Kalorimeter Experiment)
has been designed with the main purpose of characterizing the SPIDER negative ion
beam in terms of beam uniformity and divergence during short pulse operations. STRIKE is made
of 16 1D Carbon Fibre Composite (CFC) tiles, intercepting the whole beam and observed on the
rear side by infrared (IR) cameras.
The front observation presents some drawbacks due to optically emitting layer caused by the
excited gas between the beam source and the calorimeter, and the material sublimated from the
calorimeter surfaces due to the heating itself. It is then necessary to solve an inverse non-linear
problem to determine the energy flux profile impinging on the calorimeter, from the 2D temperature
pattern measured on the rear side of the tiles. Most of the conventional methods used to solve
this inverse problem are unbearably time consuming, so a ready-to-go instrument to determine
the beam condition, while operating STRIKE, is mandatory. In this work, the inverse problem,
both in stationary and non-stationary conditions, is faced by using a Neural Network (NN) model,
pursuing two different approaches. In the first one, the NN is trained to directly solve the inverse
problem, by associating the radiation profile (target) to the measured temperature profile (input).
In the second approach, a NN is trained to solve the direct problem, where the input is the radiation
profile and the target is the temperature profile. Then, the NN is inverted by determining
the input corresponding to a fixed target. Preliminary results show the reliability of the proposed
method for STRIKE real time operation.
Tipologia CRIS:
04.02 Abstract in Atti di convegno
Keywords:
calorimeter STRIKE; neural networks
Elenco autori:
Serianni, Gianluigi
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