Particles Detection System with CR-39 Based on Deep Learning

IF 1.1 4区 物理与天体物理 Q4 PHYSICS, APPLIED Laser and Particle Beams Pub Date : 2022-06-30 DOI:10.1155/2022/3820671
Gal Amit, Idan Mosseri, Ofir Even-Hen, Nadav Schneider, Elad Fisher, H. Datz, E. Cohen, N. Nissim
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引用次数: 1

Abstract

We present a novel method that we call FAINE, fast artificial intelligence neutron detection system. FAINE automatically classifies tracks of fast neutrons on CR-39 detectors using a deep learning model. This method was demonstrated using a LANDAUER Neutrak® fast neutron dosimetry system, which is installed in the External Dosimetry Laboratory (EDL) at Soreq Nuclear Research Center (SNRC). In modern fast neutron dosimetry systems, after the preliminary stages of etching and imaging of the CR-39 detectors, the third stage uses various types of computer vision systems combined with a manual revision to count the CR-39 tracks and then convert them to a dose in mSv units. Our method enhances these modern systems by introducing an innovative algorithm, which uses deep learning to classify all CR-39 tracks as either real neutron tracks or any other sign such as dirt, scratches, or even cleaning remainders. This new algorithm makes the third stage of manual CR-39 tracks revision superfluous and provides a completely repeatable and accurate way of measuring either neutrons flux or dose. The experimental results show a total accuracy rate of 96.7% for the true positive tracks and true negative tracks detected by our new algorithm against the current method, which uses computer vision followed by manual revision. This algorithm is now in the process of calibration for both alpha-particles detection and fast neutron spectrometry classification and is expected to be very useful in analyzing results of proton-boron11 fusion experiments. Being fully automatic, the new algorithm will enhance the quality assurance and effectiveness of external dosimetry, will lower the uncertainty for the reported dose measurements, and might also enable lowering the system’s detection threshold.
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基于深度学习的CR-39粒子检测系统
我们提出了一种新的方法,我们称之为FAINE,快速人工智能中子探测系统。FAINE使用深度学习模型自动对CR-39探测器上的快中子轨迹进行分类。该方法使用安装在Soreq核研究中心(SNRC)外部剂量测定实验室(EDL)的LANDAUER Neutrak®快中子剂量测定系统进行了演示。在现代快中子剂量测定系统中,在CR-39探测器的蚀刻和成像的初步阶段之后,第三阶段使用各种类型的计算机视觉系统结合人工修正来计算CR-39轨道,然后将其转换为以毫西弗单位为单位的剂量。我们的方法通过引入一种创新的算法来增强这些现代系统,该算法使用深度学习将所有CR-39轨道分类为真正的中子轨道或任何其他迹象,如污垢,划痕,甚至清洁残留物。该算法使CR-39轨道修正的第三阶段工作变得多余,提供了一种完全可重复和精确的中子通量或剂量测量方法。实验结果表明,与目前采用计算机视觉再进行人工修正的方法相比,新算法检测真阳性轨迹和真阴性轨迹的总准确率达到96.7%。该算法目前正在对α粒子检测和快中子光谱分类进行标定,有望在质子-硼- 11聚变实验结果分析中发挥重要作用。由于完全自动化,新算法将提高外部剂量测定的质量保证和有效性,降低报告剂量测量的不确定性,也可能降低系统的检测阈值。
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来源期刊
Laser and Particle Beams
Laser and Particle Beams PHYSICS, APPLIED-
CiteScore
1.90
自引率
11.10%
发文量
25
审稿时长
1 months
期刊介绍: Laser and Particle Beams is an international journal which deals with basic physics issues of intense laser and particle beams, and the interaction of these beams with matter. Research on pulse power technology associated with beam generation is also of strong interest. Subjects covered include the physics of high energy densities; non-LTE phenomena; hot dense matter and related atomic, plasma and hydrodynamic physics and astrophysics; intense sources of coherent radiation; high current particle accelerators; beam-wave interaction; and pulsed power technology.
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