极端环境下基于深度学习的放射性同位素定量

IF 2.8 3区 物理与天体物理 Q3 CHEMISTRY, PHYSICAL
Minhwan Park , Chanho Kim , Junseong Hwang , Jung-Yeol Yeom
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引用次数: 0

摘要

伽马射线光谱学是鉴定和量化放射性同位素的一项关键技术,但在高温和强辐射等极端环境下,其可靠性受到严重损害。传统的分析方法依赖于稳定的参考光谱和采集后的校正,难以解决由这些条件引起的复杂和非线性光谱畸变。本研究介绍了一种基于深度学习的系统,旨在提供更强大和直接的分析方法。我们开发了一种解决方案,将坚固耐用的伽马射线探测器与2D卷积神经网络(CNN)相结合,直接从原始扭曲的光谱中估计放射性同位素的比例。该系统具有良好的通用性和鲁棒性。在不同温度(25-150°C)下的稀疏数据子集(137Cs, 60Co, 22Na, 133Ba和152Eu)和显示辐射诱导降解(0-1.67 MGy)的Ce:GPS闪烁体上训练,该模型即使在未训练的条件下也能准确估计同位素比例。在未经训练的温度(75°C和125°C时为1.82%)和未经训练的辐照后条件下,它的平均绝对误差(MAE)值都很低,在未经训练的剂量步骤中平均MAE为1.86%(剂量步骤2时局部增加152Eu)。这些结果验证了该系统在不需要特定环境信息或校准调整的情况下有效运行的能力,显示出与传统方法相比的显著优势。这项工作通过为具有挑战性的高应力环境中的同位素定量提供可靠的解决方案,代表了伽马射线光谱学的重大进步。该系统具有较强的泛化能力,为在核事故监测、放射性废物管理等传统方法面临重大局限的领域的实际应用铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning-based radioisotope quantification for extreme environments
Gamma-ray spectroscopy is a crucial technique for identifying and quantifying radioisotopes, but its reliability is severely compromised in extreme environments such as high temperatures and intense radiation. Traditional analysis methods, which depend on stable reference spectra and post-acquisition corrections, struggle to address the complex and non-linear spectral distortions arising from these conditions. This study introduces a deep learning-based system designed to offer a more robust and direct analytical approach. We developed a solution combining a ruggedized gamma-ray detector with a 2D convolutional neural network (CNN) that estimates radioisotope proportions directly from raw, distorted spectra. The proposed system demonstrated exceptional generalization and robustness. Trained on a sparse subset of data (137Cs, 60Co, 22Na, 133Ba, and 152Eu) at varying temperatures (25–150 °C) and with a Ce:GPS scintillator exhibiting radiation-induced degradation (0–1.67 MGy), the model accurately estimated isotope proportions even under untrained conditions. It achieved low mean absolute error (MAE) values for both untrained temperatures (1.82 % at 75 °C and 125 °C) and untrained post-irradiation conditions, achieving an average MAE of 1.86 % across the untrained dose steps (with a localized increase for 152Eu at dose step 2). These results validate the system's ability to operate effectively without requiring specific environmental information or calibration adjustments, showcasing a significant advantage over conventional methods. This work represents a significant advancement in gamma-ray spectroscopy by providing a reliable solution for isotope quantification in challenging, high-stress environments. The system's strong generalization capabilities pave the way for practical applications in nuclear accident monitoring, radioactive waste management, and other fields where traditional methods face significant limitations.
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来源期刊
Radiation Physics and Chemistry
Radiation Physics and Chemistry 化学-核科学技术
CiteScore
5.60
自引率
17.20%
发文量
574
审稿时长
12 weeks
期刊介绍: Radiation Physics and Chemistry is a multidisciplinary journal that provides a medium for publication of substantial and original papers, reviews, and short communications which focus on research and developments involving ionizing radiation in radiation physics, radiation chemistry and radiation processing. The journal aims to publish papers with significance to an international audience, containing substantial novelty and scientific impact. The Editors reserve the rights to reject, with or without external review, papers that do not meet these criteria. This could include papers that are very similar to previous publications, only with changed target substrates, employed materials, analyzed sites and experimental methods, report results without presenting new insights and/or hypothesis testing, or do not focus on the radiation effects.
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