论文标题

无源伽玛发射断层扫描的定量成像和自动化燃料引脚识别

Quantitative Imaging and Automated Fuel Pin Identification for Passive Gamma Emission Tomography

论文作者

Fang, Ming, Altmann, Yoann, Della Latta, Daniele, Salvatori, Massimiliano, Di Fulvio, Angela

论文摘要

通过核保障措施监控会员国遵守《核武器不扩散条约》。被动伽马排放断层扫描系统是由国际原子能局(IAEA)开发的一种新颖的工具,用于验证存储在水池中的用过的核燃料。先进的图像重建技术对于获得耗尽燃料束的高质量的横截面图像至关重要,以允许IAEA检查员监测核材料并迅速识别其转移。在这项工作中,我们开发了一个软件套件,可以准确地重建耗时的燃料横截面图像,自动识别当前的燃料棒并估算其活动。独特的图像重建挑战是由于其高活性和自我侵入而对付费燃料的测量提出的。我们实施了一个线性向前模型,以建模检测器对PGEN内部燃油棒的响应。图像重建是通过使用快速介绍阈值算法求解正规的线性反问题来执行的。我们还实施了传统的过滤后投影方法来进行比较,并将两种方法应用于模拟的模拟燃料组件的图像。使用逆问题方法获得了较高的图像分辨率和更少的重建伪像,均方纠正率降低了50%,结构相似性提高了200%。然后,我们使用卷积神经网络自动识别束类型并从图像中提取销钉位置。估计的活动水平最终与地面真相进行了比较。提出的计算方法准确地估计了本引脚的活性水平,相关的不确定性约为5%。

Compliance of member States to the Treaty on the Non-Proliferation of Nuclear Weapons is monitored through nuclear safeguards. The Passive Gamma Emission Tomography system is a novel instrument developed by the International Atomic Energy Agency (IAEA) for the verification of spent nuclear fuel stored in water pools. Advanced image reconstruction techniques are crucial for obtaining high-quality cross-sectional images of the spent-fuel bundle to allow inspectors of the IAEA to monitor nuclear material and promptly identify its diversion. In this work, we have developed a software suite to accurately reconstruct the spent-fuel cross sectional image, automatically identify present fuel rods, and estimate their activity. Unique image reconstruction challenges are posed by the measurement of spent fuel, due to its high activity and the self-attenuation. We implemented a linear forward model to model the detector responses to the fuel rods inside the PGET. The image reconstruction is performed by solving a regularized linear inverse problem using the fast-iterative shrinkage-thresholding algorithm. We have also implemented the traditional filtered back projection method for comparison and applied both methods to reconstruct images of simulated mockup fuel assemblies. Higher image resolution and fewer reconstruction artifacts were obtained with the inverse-problem approach, with the mean-square-error reduced by 50%, and the structural-similarity improved by 200%. We then used a convolutional neural network to automatically identify the bundle type and extract the pin locations from the images; the estimated activity levels finally being compared with the ground truth. The proposed computational methods accurately estimated the activity levels of the present pins, with an associated uncertainty of approximately 5%.

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