Radioactive Source Localisation via Projective Linear Reconstruction

Radiation mapping, through the detection of ionising gamma-ray emissions, is an important technique used across the nuclear industry to characterise environments over a range of length scales. In complex scenarios, the precise localisation and activity of radiological sources becomes difficult to de...

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Main Authors: Samuel R. White, Kieran T. Wood, Peter G. Martin, Dean T. Connor, Thomas B. Scott, David A. Megson-Smith
Format: Article
Language:English
Published: MDPI AG 2021-01-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/3/807
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spelling doaj-88a540508f084f6c89a3b3ea5d5d65632021-01-27T00:02:11ZengMDPI AGSensors1424-82202021-01-012180780710.3390/s21030807Radioactive Source Localisation via Projective Linear ReconstructionSamuel R. White0Kieran T. Wood1Peter G. Martin2Dean T. Connor3Thomas B. Scott4David A. Megson-Smith5HH Wills Physics Laboratory, School of Physics, University of Bristol, Tyndall Avenue, Bristol BS8 1TL, UKDepartment of Aerospace Engineering, University of Bristol, Queens Building, University Walk, Bristol BS8 1TR, UKHH Wills Physics Laboratory, School of Physics, University of Bristol, Tyndall Avenue, Bristol BS8 1TL, UKHH Wills Physics Laboratory, School of Physics, University of Bristol, Tyndall Avenue, Bristol BS8 1TL, UKHH Wills Physics Laboratory, School of Physics, University of Bristol, Tyndall Avenue, Bristol BS8 1TL, UKHH Wills Physics Laboratory, School of Physics, University of Bristol, Tyndall Avenue, Bristol BS8 1TL, UKRadiation mapping, through the detection of ionising gamma-ray emissions, is an important technique used across the nuclear industry to characterise environments over a range of length scales. In complex scenarios, the precise localisation and activity of radiological sources becomes difficult to determine due to the inability to directly image gamma photon emissions. This is a result of the potentially unknown number of sources combined with uncertainties associated with the source-detector separation—causing an apparent ‘blurring’ of the as-detected radiation field relative to the true distribution. Accurate delimitation of distinct sources is important for decommissioning, waste processing, and homeland security. Therefore, methods for estimating the precise, ‘true’ solution from radiation mapping measurements are required. Herein is presented a computational method of enhanced radiological source localisation from scanning survey measurements conducted with a robotic arm. The procedure uses an experimentally derived Detector Response Function (DRF) to perform a randomised-Kaczmarz deconvolution from robotically acquired radiation field measurements. The performance of the process is assessed on radiation maps obtained from a series of emulated waste processing scenarios. The results demonstrate a Projective Linear Reconstruction (PLR) algorithm can successfully locate a series of point sources to within 2 cm of the true locations, corresponding to resolution enhancements of between 5× and 10×.https://www.mdpi.com/1424-8220/21/3/807radiation sensingmicro-gamma spectrometerslocalisationrobotics sensingradiation mappinglinear inversion
collection DOAJ
language English
format Article
sources DOAJ
author Samuel R. White
Kieran T. Wood
Peter G. Martin
Dean T. Connor
Thomas B. Scott
David A. Megson-Smith
spellingShingle Samuel R. White
Kieran T. Wood
Peter G. Martin
Dean T. Connor
Thomas B. Scott
David A. Megson-Smith
Radioactive Source Localisation via Projective Linear Reconstruction
Sensors
radiation sensing
micro-gamma spectrometers
localisation
robotics sensing
radiation mapping
linear inversion
author_facet Samuel R. White
Kieran T. Wood
Peter G. Martin
Dean T. Connor
Thomas B. Scott
David A. Megson-Smith
author_sort Samuel R. White
title Radioactive Source Localisation via Projective Linear Reconstruction
title_short Radioactive Source Localisation via Projective Linear Reconstruction
title_full Radioactive Source Localisation via Projective Linear Reconstruction
title_fullStr Radioactive Source Localisation via Projective Linear Reconstruction
title_full_unstemmed Radioactive Source Localisation via Projective Linear Reconstruction
title_sort radioactive source localisation via projective linear reconstruction
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-01-01
description Radiation mapping, through the detection of ionising gamma-ray emissions, is an important technique used across the nuclear industry to characterise environments over a range of length scales. In complex scenarios, the precise localisation and activity of radiological sources becomes difficult to determine due to the inability to directly image gamma photon emissions. This is a result of the potentially unknown number of sources combined with uncertainties associated with the source-detector separation—causing an apparent ‘blurring’ of the as-detected radiation field relative to the true distribution. Accurate delimitation of distinct sources is important for decommissioning, waste processing, and homeland security. Therefore, methods for estimating the precise, ‘true’ solution from radiation mapping measurements are required. Herein is presented a computational method of enhanced radiological source localisation from scanning survey measurements conducted with a robotic arm. The procedure uses an experimentally derived Detector Response Function (DRF) to perform a randomised-Kaczmarz deconvolution from robotically acquired radiation field measurements. The performance of the process is assessed on radiation maps obtained from a series of emulated waste processing scenarios. The results demonstrate a Projective Linear Reconstruction (PLR) algorithm can successfully locate a series of point sources to within 2 cm of the true locations, corresponding to resolution enhancements of between 5× and 10×.
topic radiation sensing
micro-gamma spectrometers
localisation
robotics sensing
radiation mapping
linear inversion
url https://www.mdpi.com/1424-8220/21/3/807
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