Reconstruction of Compton Edges in Plastic Gamma Spectra Using Deep Autoencoder

Plastic scintillation detectors are widely utilized in radiation measurement because of their unique characteristics. However, they are generally used for counting applications because of the energy broadening effect and the absence of a photo peak in their spectra. To overcome their weaknesses, man...

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Main Authors: Byoungil Jeon, Youhan Lee, Myungkook Moon, Jongyul Kim, Gyuseong Cho
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/10/2895
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spelling doaj-20aecd4c07e340eeb3707cd7626684892020-11-25T03:11:46ZengMDPI AGSensors1424-82202020-05-01202895289510.3390/s20102895Reconstruction of Compton Edges in Plastic Gamma Spectra Using Deep AutoencoderByoungil Jeon0Youhan Lee1Myungkook Moon2Jongyul Kim3Gyuseong Cho4Intelligent Computing Laboratory, Korea Atomic Energy Research Institute, Daejeon 34507, KoreaIntelligent Computing Laboratory, Korea Atomic Energy Research Institute, Daejeon 34507, KoreaQuantum Beam Science Division, Korea Atomic Energy Research Institute, Daejeon 34507, KoreaQuantum Beam Science Division, Korea Atomic Energy Research Institute, Daejeon 34507, KoreaDepartment of Nuclear and Quantum Engineering, Korea Advanced Institute of Science and Technology, Daejeon 34141, KoreaPlastic scintillation detectors are widely utilized in radiation measurement because of their unique characteristics. However, they are generally used for counting applications because of the energy broadening effect and the absence of a photo peak in their spectra. To overcome their weaknesses, many studies on pseudo spectroscopy have been reported, but most of them have not been able to directly identify the energy of incident gamma rays. In this paper, we propose a method to reconstruct Compton edges in plastic gamma spectra using an artificial neural network for direct pseudo gamma spectroscopy. Spectra simulated using MCNP 6.2 software were used to generate training and validation sets. Our model was trained to reconstruct Compton edges in plastic gamma spectra. In addition, we aimed for our model to be capable of reconstructing Compton edges even for spectra having poor counting statistics by designing a dataset generation procedure. Minimum reconstructible counts for single isotopes were evaluated with metric of mean averaged percentage error as 650 for <sup>60</sup>Co, 2000 for <sup>137</sup>Cs, 3050 for <sup>22</sup>Na, and 3750 for <sup>133</sup>Ba. The performance of our model was verified using the simulated spectra measured by a PVT detector. Although our model was trained using simulation data only, it successfully reconstructed Compton edges even in measured gamma spectra with poor counting statistics.https://www.mdpi.com/1424-8220/20/10/2895plastic gamma spectraenergy broadening correctionCompton edge reconstructiondeep learningdeep autoencoder
collection DOAJ
language English
format Article
sources DOAJ
author Byoungil Jeon
Youhan Lee
Myungkook Moon
Jongyul Kim
Gyuseong Cho
spellingShingle Byoungil Jeon
Youhan Lee
Myungkook Moon
Jongyul Kim
Gyuseong Cho
Reconstruction of Compton Edges in Plastic Gamma Spectra Using Deep Autoencoder
Sensors
plastic gamma spectra
energy broadening correction
Compton edge reconstruction
deep learning
deep autoencoder
author_facet Byoungil Jeon
Youhan Lee
Myungkook Moon
Jongyul Kim
Gyuseong Cho
author_sort Byoungil Jeon
title Reconstruction of Compton Edges in Plastic Gamma Spectra Using Deep Autoencoder
title_short Reconstruction of Compton Edges in Plastic Gamma Spectra Using Deep Autoencoder
title_full Reconstruction of Compton Edges in Plastic Gamma Spectra Using Deep Autoencoder
title_fullStr Reconstruction of Compton Edges in Plastic Gamma Spectra Using Deep Autoencoder
title_full_unstemmed Reconstruction of Compton Edges in Plastic Gamma Spectra Using Deep Autoencoder
title_sort reconstruction of compton edges in plastic gamma spectra using deep autoencoder
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-05-01
description Plastic scintillation detectors are widely utilized in radiation measurement because of their unique characteristics. However, they are generally used for counting applications because of the energy broadening effect and the absence of a photo peak in their spectra. To overcome their weaknesses, many studies on pseudo spectroscopy have been reported, but most of them have not been able to directly identify the energy of incident gamma rays. In this paper, we propose a method to reconstruct Compton edges in plastic gamma spectra using an artificial neural network for direct pseudo gamma spectroscopy. Spectra simulated using MCNP 6.2 software were used to generate training and validation sets. Our model was trained to reconstruct Compton edges in plastic gamma spectra. In addition, we aimed for our model to be capable of reconstructing Compton edges even for spectra having poor counting statistics by designing a dataset generation procedure. Minimum reconstructible counts for single isotopes were evaluated with metric of mean averaged percentage error as 650 for <sup>60</sup>Co, 2000 for <sup>137</sup>Cs, 3050 for <sup>22</sup>Na, and 3750 for <sup>133</sup>Ba. The performance of our model was verified using the simulated spectra measured by a PVT detector. Although our model was trained using simulation data only, it successfully reconstructed Compton edges even in measured gamma spectra with poor counting statistics.
topic plastic gamma spectra
energy broadening correction
Compton edge reconstruction
deep learning
deep autoencoder
url https://www.mdpi.com/1424-8220/20/10/2895
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AT myungkookmoon reconstructionofcomptonedgesinplasticgammaspectrausingdeepautoencoder
AT jongyulkim reconstructionofcomptonedgesinplasticgammaspectrausingdeepautoencoder
AT gyuseongcho reconstructionofcomptonedgesinplasticgammaspectrausingdeepautoencoder
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