基于能量损失的广义介子轨迹估计算法在介子断层成像中的应用

S. Chatzidakis, Zhengzhi Liu, J. Hayward, J. Scaglione
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引用次数: 15

摘要

本文提出了一种广义μ子轨迹估计(GMTE)算法,用于估计均匀或非均匀介质中μ子的路径。宇宙射线μ子在核不扩散和保障核查应用中的使用最近引起了人们的注意,这是由于检查的非侵入性和被动性质,穿透能力,以及最近在探测器方面取得的进展,这些探测器可以在穿过成像物体之前和之后测量单个μ子的位置和方向。然而,由于低介子通量和多重库仑散射(MCS)的影响,μ子图像重建技术在分辨率上受到限制。目前的重建算法依赖于过于简单的假设,通过成像对象进行μ子路径估计。为了实现健壮的μ子层析成像,需要高效灵活的基于物理的算法来模拟MCS过程,并准确估计μ子穿过物体时最可能的轨迹。在目前的工作中,利用贝叶斯框架和高斯近似的MCS进行了探索,以估计宇宙射线介子穿过均匀或非均匀介质并经历MCS的最可能路径。将该算法的精度与蒙特卡罗模拟的μ子轨迹进行了比较。研究发现,该算法预计能够预测0.5 GeV μ子的μ子轨迹小于1.5 mm RMS, 3 GeV μ子的μ子轨迹小于0.25 mm RMS,与SLP相比提高50%,与PoCA相比提高15%。此外,观测到相对于PoCA有用μ子通量增加了30%。在能量损失不显著的情况下,较高的介子能量或较小的介子穿透深度改善了介子轨迹预测。研究了电离能损失的影响,提出了一个易于使用的线性能量损失关系式。
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A Generalized Muon Trajectory Estimation Algorithm with Energy Loss for Application to Muon Tomography
This work presents a generalized muon trajectory estimation (GMTE) algorithm to estimate the path of a muon in either uniform or nonuniform media. The use of cosmic ray muons in nuclear nonproliferation and safeguards verification applications has recently gained attention due to the nonintrusive and passive nature of the inspection, penetrating capabilities, as well as recent advances in detectors that measure position and direction of the individual muons before and after traversing the imaged object. However, muon image reconstruction techniques are limited in resolution due to low muon flux and the effects of multiple Coulomb scattering (MCS). Current reconstruction algorithms rely on overly simple assumptions for muon path estimation through the imaged object. For robust muon tomography, efficient and flexible physics based algorithms are needed to model the MCS process and accurately estimate the most probable trajectory of a muon as it traverses an object. In the present work, the use of a Bayesian framework and a Gaussian approximation of MCS are explored for estimation of the most likely path of a cosmic ray muon traversing uniform or nonuniform media and undergoing MCS. The algorithm's precision is compared to Monte Carlo simulated muon trajectories. It was found that the algorithm is expected to be able to predict muon tracks to less than 1.5 mm RMS for 0.5 GeV muons and 0.25 mm RMS for 3 GeV muons, a 50 percent improvement compared to SLP and 15 percent improvement when compared to PoCA. Further, a 30 percent increase in useful muon flux was observed relative to PoCA. Muon track prediction improved for higher muon energies or smaller penetration depth where energy loss is not significant. The effect of energy loss due to ionization is investigated, and a linear energy loss relation that is easy to use is proposed.
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