Forecasting Particle Accelerator Interruptions Using Logistic LASSO
Regression
- URL: http://arxiv.org/abs/2303.08984v1
- Date: Wed, 15 Mar 2023 23:11:30 GMT
- Title: Forecasting Particle Accelerator Interruptions Using Logistic LASSO
Regression
- Authors: Sichen Li, Jochem Snuverink, Fernando Perez-Cruz, Andreas Adelmann
- Abstract summary: Unforeseen particle accelerator interruptions, also known as interlocks, lead to abrupt operational changes despite being necessary safety measures.
We propose a simple yet powerful binary classification model aiming to forecast such interruptions.
The model is formulated as logistic regression penalized by at least absolute shrinkage and selection operator.
- Score: 62.997667081978825
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Unforeseen particle accelerator interruptions, also known as interlocks, lead
to abrupt operational changes despite being necessary safety measures. These
may result in substantial loss of beam time and perhaps even equipment damage.
We propose a simple yet powerful binary classification model aiming to forecast
such interruptions, in the case of the High Intensity Proton Accelerator
complex at the Paul Scherrer Institut. The model is formulated as logistic
regression penalized by least absolute shrinkage and selection operator, based
on a statistical two sample test to distinguish between unstable and stable
states of the accelerator.
The primary objective for receiving alarms prior to interlocks is to allow
for countermeasures and reduce beam time loss. Hence, a continuous evaluation
metric is developed to measure the saved beam time in any period, given the
assumption that interlocks could be circumvented by reducing the beam current.
The best-performing interlock-to-stable classifier can potentially increase the
beam time by around 5 min in a day. Possible instrumentation for fast
adjustment of the beam current is also listed and discussed.
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