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Characteristics of Muon Computed Tomography of Used Fuel Casks Using Algebraic Reconstruction

机译:使用代数重建使用燃料桶的MUON计算机断层扫描的特征

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Cosmic raymuons passing through matter lose energy from inelastic collisions with electrons and are deflected from nuclei due to multiple Coulomb scattering (MCS). The recent developments in position sensitive muon detectors that can measure incoming and outgoing trajectories of individual muons indicate that MCS could be an excellent candidate for spent nuclear fuel imaging. The main purpose of this paper is to evaluate tomographic scanning of spent nuclear fuel stored within vertical and horizontal dry storage casks. A quantitative analysis of the characteristics of images obtained with filtered back projection (FBP) and algebraic reconstruction techniques (ART) are presented herein, as such a comparison has not been carried out in the past. FBP is a fast tool to determine object boundaries. ART can include muon path models and prior knowledge that can improve resolution and reduce measurement time. The results demonstrate that missing fuel assemblies can be identified with more than 5 projections and that use of muon momentum significantly increases image resolution. It is expected that MCS can be used to successfully reconstruct the dry cask contents and allow identification of all described scenarios in hours. It is also expected that when total variation minimization and a non-local mean filter are applied, ART may yield much better image quality than FBP.
机译:通过物质通过的宇宙思维乐队与电子的无弹性碰撞失去能量,并且由于多个库仑散射(MCS),从核偏转。可以测量单个μONs的入射和传出轨迹的位置敏感的μON检测器的最新进展表明MCS可以是废核燃料成像的优异候选者。本文的主要目的是评估储存在垂直和水平干燥储存桶内的废核燃料的断层扫描。本文介绍了用过滤后投影(FBP)和代数重建技术(ARGABRAIC重建技术(FBP)获得的图像特性的定量分析,因为过去尚未进行这种比较。 FBP是一个快速确定对象边界的工具。艺术可以包括muon路径模型和现有知识,可以改善分辨率并降低测量时间。结果表明,缺失的燃料组件可以用超过5个突起来识别,并且使用MuOn动量显着提高了图像分辨率。预计MCS可用于成功重建干燥的桶内容并允许在小时内识别所有所描述的情景。还预期,当应用总变化最小化和非局部平均滤波器时,技术可以产生比FBP更好的图像质量。

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