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Novel Algorithm for Radon Real-Time Measurements with a Pixelated Detector

Nowadays, radon gas exposure is considered one of the main health concerns for the population because, by carrying about half the total dose due to environmental radioactivity, it is the second cause of lung cancer after smoking. Due to a relatively long half-life of 3.82 days, the chemical inertia...

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Autores principales: Rizzo, Alessandro, Cardellini, Francesco, Poggi, Claudio, Borra, Enrico, Ciciani, Luca, Narici, Livio, Sperandio, Luciano, Vilardi, Ignazio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8780917/
https://www.ncbi.nlm.nih.gov/pubmed/35062477
http://dx.doi.org/10.3390/s22020516
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author Rizzo, Alessandro
Cardellini, Francesco
Poggi, Claudio
Borra, Enrico
Ciciani, Luca
Narici, Livio
Sperandio, Luciano
Vilardi, Ignazio
author_facet Rizzo, Alessandro
Cardellini, Francesco
Poggi, Claudio
Borra, Enrico
Ciciani, Luca
Narici, Livio
Sperandio, Luciano
Vilardi, Ignazio
author_sort Rizzo, Alessandro
collection PubMed
description Nowadays, radon gas exposure is considered one of the main health concerns for the population because, by carrying about half the total dose due to environmental radioactivity, it is the second cause of lung cancer after smoking. Due to a relatively long half-life of 3.82 days, the chemical inertia and since its parent Ra-226 is largely diffuse on the earth’s crust and especially in the building materials, radon can diffuse and potentially saturate human habitats, with a concentration that can suddenly change during the 24 h day depending on temperature, pressure, and relative humidity. For such reasons, ‘real-time’ measurements performed by an active detector, possibly of small dimensions and a handy configuration, can play an important role in evaluating the risk and taking the appropriate countermeasures to mitigate it. In this work, a novel algorithm for pattern recognition was developed to exploit the potentialities of silicon active detectors with a pixel matrix structure to measure radon through the α emission, in a simple measurement configuration, where the device is placed directly in air with no holder, no collection filter or electrostatic field to drift the radon progenies towards the detector active area. This particular measurement configuration (dubbed as bare) requires an α/β-discrimination method that is not based on spectroscopic analysis: as the gas surrounds the detector the α particles are emitted at different distances from it, so they lose variable energy amount in air depending on the traveled path-length which implies a variable deposited energy in the active area. The pixels matrix structure allows overcoming this issue because the interaction of α, β and γ particles generate in the active area of the detector clusters (group of pixels where a signal is read) of different shape and energy dispersion. The novel algorithm that exploits such a phenomenon was developed using a pixelated silicon detector of the TimePix family with a compact design. An α (Am-241) and a β (Sr-90) source were used to calibrate the algorithm and to evaluate its performances in terms of β rejection capability and α recognition efficiency. Successively, the detector was exposed to different radon concentrations at the ENEA-INMRI radon facility in ‘bare’ configuration, in order to check the linearity of the device response over a radon concentration range. The results for this technique are presented and discussed, highlighting the potential applications especially the possibility to exploit small and handy detectors to perform radon active measurements in the simplest configuration.
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spelling pubmed-87809172022-01-22 Novel Algorithm for Radon Real-Time Measurements with a Pixelated Detector Rizzo, Alessandro Cardellini, Francesco Poggi, Claudio Borra, Enrico Ciciani, Luca Narici, Livio Sperandio, Luciano Vilardi, Ignazio Sensors (Basel) Article Nowadays, radon gas exposure is considered one of the main health concerns for the population because, by carrying about half the total dose due to environmental radioactivity, it is the second cause of lung cancer after smoking. Due to a relatively long half-life of 3.82 days, the chemical inertia and since its parent Ra-226 is largely diffuse on the earth’s crust and especially in the building materials, radon can diffuse and potentially saturate human habitats, with a concentration that can suddenly change during the 24 h day depending on temperature, pressure, and relative humidity. For such reasons, ‘real-time’ measurements performed by an active detector, possibly of small dimensions and a handy configuration, can play an important role in evaluating the risk and taking the appropriate countermeasures to mitigate it. In this work, a novel algorithm for pattern recognition was developed to exploit the potentialities of silicon active detectors with a pixel matrix structure to measure radon through the α emission, in a simple measurement configuration, where the device is placed directly in air with no holder, no collection filter or electrostatic field to drift the radon progenies towards the detector active area. This particular measurement configuration (dubbed as bare) requires an α/β-discrimination method that is not based on spectroscopic analysis: as the gas surrounds the detector the α particles are emitted at different distances from it, so they lose variable energy amount in air depending on the traveled path-length which implies a variable deposited energy in the active area. The pixels matrix structure allows overcoming this issue because the interaction of α, β and γ particles generate in the active area of the detector clusters (group of pixels where a signal is read) of different shape and energy dispersion. The novel algorithm that exploits such a phenomenon was developed using a pixelated silicon detector of the TimePix family with a compact design. An α (Am-241) and a β (Sr-90) source were used to calibrate the algorithm and to evaluate its performances in terms of β rejection capability and α recognition efficiency. Successively, the detector was exposed to different radon concentrations at the ENEA-INMRI radon facility in ‘bare’ configuration, in order to check the linearity of the device response over a radon concentration range. The results for this technique are presented and discussed, highlighting the potential applications especially the possibility to exploit small and handy detectors to perform radon active measurements in the simplest configuration. MDPI 2022-01-10 /pmc/articles/PMC8780917/ /pubmed/35062477 http://dx.doi.org/10.3390/s22020516 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Rizzo, Alessandro
Cardellini, Francesco
Poggi, Claudio
Borra, Enrico
Ciciani, Luca
Narici, Livio
Sperandio, Luciano
Vilardi, Ignazio
Novel Algorithm for Radon Real-Time Measurements with a Pixelated Detector
title Novel Algorithm for Radon Real-Time Measurements with a Pixelated Detector
title_full Novel Algorithm for Radon Real-Time Measurements with a Pixelated Detector
title_fullStr Novel Algorithm for Radon Real-Time Measurements with a Pixelated Detector
title_full_unstemmed Novel Algorithm for Radon Real-Time Measurements with a Pixelated Detector
title_short Novel Algorithm for Radon Real-Time Measurements with a Pixelated Detector
title_sort novel algorithm for radon real-time measurements with a pixelated detector
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8780917/
https://www.ncbi.nlm.nih.gov/pubmed/35062477
http://dx.doi.org/10.3390/s22020516
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