Author:
Jeon Byoungil,Park Jaeheong,Park Kyutae,Lee Joohyun,Moon Myungkook
Abstract
Abstract
Radiation portal monitors comprising large-volume plastic
scintillators are commonly used to monitor the smuggling of
radioactive materials. Various applications have been proposed to
perform radioisotope identification using these monitors. Such
applications require calibration of the spectrum measured by the
detector to obtain the physical energy spectrum. The relationship
between the multichannel readout and energy bins depends on
environmental conditions: it implies that energy calibration in
radiation portal monitors should be performed periodically, even
multiple times in a single day, thus demanding for a simple and fast
energy calibration method. In this study, a deep learning model and
a spectral remapping method were used to transform the raw detector
output into an energy spectrum with constant energy bins. The deep
learning model was designed to predict energy calibration parameters
based on the channel spectrum of a single radioisotope. The dataset
used to train the deep learning model was generated using the
spectrum of the radiation portal monitor. A convolutional neural
network model was utilized to evaluate the performance. The
remapping method was designed to remap calibrated energy bins to
fixed energy bins based on the linear interpolation of nearby
bins. The performance of the neural network model and of the
remapping method were then evaluated based on several measured
spectra taken with different conditions, and found to be adequate to
fulfill the requirements.
Subject
Mathematical Physics,Instrumentation