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A Bayesian Approach for Remote Depth Estimation of Buried Low-Level Radioactive Waste with a NaI(Tl) Detector

机译:一种贝叶斯探测利用NAI(TL)探测器的埋藏低级放射性废物的远程深度估计方法

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摘要

This study reports on the implementation of Bayesian inference to improve the estimation of remote-depth profiling for low-level radioactive contaminants with a low-resolution NaI(Tl) detector. In particular, we demonstrate that this approach offers results that are more reliable because it provides a mean value with a 95% credible interval by determining the probability distributions of the burial depth and activity of a radioisotope in a single measurement. To evaluate the proposed method, the simulation was compared with experimental measurements. The simulation showed that the proposed method was able to detect the depth of a Cs-137 point source buried below 60 cm in sand, with a 95% credible interval. The experiment also showed that the maximum detectable depths for weakly active 0.94-μCi Cs-137 and 0.69-μCi Co-60 sources buried in sand was 21 cm, providing an improved performance compared to existing methods. In addition, the maximum detectable depths hardly degraded, even with a reduced acquisition time of less than 60 s or with gain-shift effects; therefore, the proposed method is appropriate for the accurate and rapid non-intrusive localization of buried low-level radioactive contaminants during in situ measurement.
机译:本研究报告了贝叶斯推断的实施,以改善具有低分辨率Nai(TL)检测器的低级放射性污染物远程深度分析的估计。特别是,我们证明了这种方法提供了更可靠的结果,因为它通过确定单个测量中放射性同位素的粗糙度和活动的概率分布提供了95%可信间隔的平均值。为了评估所提出的方法,将模拟与实验测量进行比较。模拟表明,该方法能够检测埋在砂中低于60厘米以下的CS-137点源的深度,具有95%的可靠间隔。该实验还表明,在砂中掩埋的弱活性0.94微酮CS-137和0.69-μCI的CS-137和0.69-μCI的烃源的最大可检测深度为21cm,提供了与现有方法相比改进的性能。另外,即使具有小于60秒的较低的采集时间或增长效果,最大可检测深度也几乎没有降低。因此,所提出的方法适用于原位测量期间埋地低水平放射性污染物的准确和快速的非侵扰性定位。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者单位
  • 年(卷),期 2019(19),24
  • 年度 2019
  • 页码 5365
  • 总页数 16
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:远程深度分析;伽玛光谱分析;贝叶斯推理;不确定性估计;放射性核废料;放射性核垃圾;放射性表征;核退役;辐射检测;低分辨率检测器;低分辨率检测器;

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