Neural Network Approaches for Mobile Spectroscopic Gamma-Ray Source Detection
Artificial neural networks (ANNs) for performing spectroscopic gamma-ray source identification have been previously introduced, primarily for applications in controlled laboratory settings. To understand the utility of these methods in scenarios and environments more relevant to nuclear safety and s...
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doaj-6c5fc08528784365aa26d74846b0868b2021-09-09T13:50:16ZengMDPI AGJournal of Nuclear Engineering2673-43622021-05-0121819020610.3390/jne2020018Neural Network Approaches for Mobile Spectroscopic Gamma-Ray Source DetectionKyle J. Bilton0Tenzing H. Y. Joshi1Mark S. Bandstra2Joseph C. Curtis3Daniel Hellfeld4Kai Vetter5Department of Nuclear Engineering at the University of California, Berkeley, Berkeley, CA 94720, USAApplied Nuclear Physics Program at Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USAApplied Nuclear Physics Program at Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USAApplied Nuclear Physics Program at Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USAApplied Nuclear Physics Program at Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USADepartment of Nuclear Engineering at the University of California, Berkeley, Berkeley, CA 94720, USAArtificial neural networks (ANNs) for performing spectroscopic gamma-ray source identification have been previously introduced, primarily for applications in controlled laboratory settings. To understand the utility of these methods in scenarios and environments more relevant to nuclear safety and security, this work examines the use of ANNs for mobile detection, which involves highly variable gamma-ray background, low signal-to-noise ratio measurements, and low false alarm rates. Simulated data from a 2” × 4” × 16” NaI(Tl) detector are used in this work for demonstrating these concepts, and the minimum detectable activity (MDA) is used as a performance metric in assessing model performance.In addition to examining simultaneous detection and identification, binary spectral anomaly detection using autoencoders is introduced in this work, and benchmarked using detection methods based on Non-negative Matrix Factorization (NMF) and Principal Component Analysis (PCA). On average, the autoencoder provides a 12% and 23% improvement over NMF- and PCA-based detection methods, respectively. Additionally, source identification using ANNs is extended to leverage temporal dynamics by means of recurrent neural networks, and these time-dependent models outperform their time-independent counterparts by 17% for the analysis examined here. The paper concludes with a discussion on tradeoffs between the ANN-based approaches and the benchmark methods examined here.https://www.mdpi.com/2673-4362/2/2/18gamma-ray source identificationgamma-ray spectroscopyneural networksmachine learningclassification |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kyle J. Bilton Tenzing H. Y. Joshi Mark S. Bandstra Joseph C. Curtis Daniel Hellfeld Kai Vetter |
spellingShingle |
Kyle J. Bilton Tenzing H. Y. Joshi Mark S. Bandstra Joseph C. Curtis Daniel Hellfeld Kai Vetter Neural Network Approaches for Mobile Spectroscopic Gamma-Ray Source Detection Journal of Nuclear Engineering gamma-ray source identification gamma-ray spectroscopy neural networks machine learning classification |
author_facet |
Kyle J. Bilton Tenzing H. Y. Joshi Mark S. Bandstra Joseph C. Curtis Daniel Hellfeld Kai Vetter |
author_sort |
Kyle J. Bilton |
title |
Neural Network Approaches for Mobile Spectroscopic Gamma-Ray Source Detection |
title_short |
Neural Network Approaches for Mobile Spectroscopic Gamma-Ray Source Detection |
title_full |
Neural Network Approaches for Mobile Spectroscopic Gamma-Ray Source Detection |
title_fullStr |
Neural Network Approaches for Mobile Spectroscopic Gamma-Ray Source Detection |
title_full_unstemmed |
Neural Network Approaches for Mobile Spectroscopic Gamma-Ray Source Detection |
title_sort |
neural network approaches for mobile spectroscopic gamma-ray source detection |
publisher |
MDPI AG |
series |
Journal of Nuclear Engineering |
issn |
2673-4362 |
publishDate |
2021-05-01 |
description |
Artificial neural networks (ANNs) for performing spectroscopic gamma-ray source identification have been previously introduced, primarily for applications in controlled laboratory settings. To understand the utility of these methods in scenarios and environments more relevant to nuclear safety and security, this work examines the use of ANNs for mobile detection, which involves highly variable gamma-ray background, low signal-to-noise ratio measurements, and low false alarm rates. Simulated data from a 2” × 4” × 16” NaI(Tl) detector are used in this work for demonstrating these concepts, and the minimum detectable activity (MDA) is used as a performance metric in assessing model performance.In addition to examining simultaneous detection and identification, binary spectral anomaly detection using autoencoders is introduced in this work, and benchmarked using detection methods based on Non-negative Matrix Factorization (NMF) and Principal Component Analysis (PCA). On average, the autoencoder provides a 12% and 23% improvement over NMF- and PCA-based detection methods, respectively. Additionally, source identification using ANNs is extended to leverage temporal dynamics by means of recurrent neural networks, and these time-dependent models outperform their time-independent counterparts by 17% for the analysis examined here. The paper concludes with a discussion on tradeoffs between the ANN-based approaches and the benchmark methods examined here. |
topic |
gamma-ray source identification gamma-ray spectroscopy neural networks machine learning classification |
url |
https://www.mdpi.com/2673-4362/2/2/18 |
work_keys_str_mv |
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1717759844915609600 |