利用固态核轨道探测器 CR-39 进行基于深度学习的阿尔法粒子光谱分析

IF 1.6 3区 物理与天体物理 Q2 NUCLEAR SCIENCE & TECHNOLOGY
G. Amit , N. Guy-Ron , O. Even-Chen , N.M. Yitzhak , N. Nissim , R. Alimi
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引用次数: 0

摘要

本文介绍了一种利用复杂的深度学习机器学习算法进行阿尔法粒子能谱分析的新方法。我们采用的方法将 CR-39 探测器上的α粒子轨迹分为六个离散能级:0.5 MeV、1.5 MeV、2.5 MeV、3.5 MeV、4.5 MeV 和 5.4 MeV。使用 241Am 源将大约 57 个不同的 CR-39 探测器暴露于所述能级的阿尔法粒子中。然后利用兰道尔 Neutrak© 系统对这些剂量计进行蚀刻和成像。使用自行开发的计算机视觉方法从 CR-39 图像中分离出能量标记的阿尔法轨迹。然后将这些轨迹图像输入人工神经网络 (ANN) 算法进行训练。完成训练后,运行测试数据集以评估算法的性能。该算法有望提高α粒子剂量测定的精确度。此外,该算法一旦推广到连续能谱以及质子等其他类型的粒子,预计将非常有利于分析各种激光驱动的高能粒子实验的结果,特别是核聚变实验的结果。
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 alpha particles spectroscopy with solid-state nuclear track detector CR-39
A novel approach for alpha particles energy spectroscopy utilizing a sophisticated deep learning machine learning algorithm is introduced. The approach we employ classifies the alpha particles trajectories on a CR-39 detector into six discrete energy levels: 0.5 MeV, 1.5 MeV, 2.5 MeV, 3.5 MeV, 4.5 MeV, and 5.4 MeV. Some 57 different CR-39 detectors were exposed to alpha particles of the stated energy levels using a241Am source. The dosimeters were then subjected to etching and imaging utilizing a Landauer Neutrak© system. A self-developed computer vision method was used to separate the energy-tagged alpha tracks from the CR-39 images. These tracks images were then inputted into an artificial neural network (ANN) algorithm for training. After completing the training, a test dataset was run to assess the algorithm's performance. An average accuracy rate exceeding 98% was attained across the six energy levels.
This algorithm has the potential to enhance the precision of alpha particle dosimetry. Furthermore, once generalized to a continuous energy spectrum, as well as for other types of particles such as protons, this algorithm is anticipated to prove highly beneficial for analyzing the outcomes of various laser-driven high-energy particle experiments in general, and specifically for fusion experiments.
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来源期刊
Radiation Measurements
Radiation Measurements 工程技术-核科学技术
CiteScore
4.10
自引率
20.00%
发文量
116
审稿时长
48 days
期刊介绍: The journal seeks to publish papers that present advances in the following areas: spontaneous and stimulated luminescence (including scintillating materials, thermoluminescence, and optically stimulated luminescence); electron spin resonance of natural and synthetic materials; the physics, design and performance of radiation measurements (including computational modelling such as electronic transport simulations); the novel basic aspects of radiation measurement in medical physics. Studies of energy-transfer phenomena, track physics and microdosimetry are also of interest to the journal. Applications relevant to the journal, particularly where they present novel detection techniques, novel analytical approaches or novel materials, include: personal dosimetry (including dosimetric quantities, active/electronic and passive monitoring techniques for photon, neutron and charged-particle exposures); environmental dosimetry (including methodological advances and predictive models related to radon, but generally excluding local survey results of radon where the main aim is to establish the radiation risk to populations); cosmic and high-energy radiation measurements (including dosimetry, space radiation effects, and single event upsets); dosimetry-based archaeological and Quaternary dating; dosimetry-based approaches to thermochronometry; accident and retrospective dosimetry (including activation detectors), and dosimetry and measurements related to medical applications.
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