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Scattered neutron tomography based on a neutron transport problem

机译:基于中子输运问题的散射中子层析成像

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摘要

Tomography refers to the cross-sectional imaging of an object from either transmission or reflection data collected by illuminating the object from many different directions. Classical tomography fails to reconstruct the optical properties of thick scattering objects because it does not adequately account for the scattering component of the neutron beam intensity exiting the sample. We proposed a new method of computed tomography which employs an inverse problem analysis of both the transmitted and scattered images generated from a beam passing through an optically thick object. This inverse problem makes use of a computationally efficient, two-dimensional forward problem based on neutron transport theory that effectively calculates the detector readings around the edges of an object. The forward problem solution uses a Step-Characteristic (SC) code with known uncollided source per cell, zero boundary flux condition and Sn discretization for the angular dependence. The calculation of the uncollided sources is performed by using an accurate discretization scheme given properties and position of the incoming beam and beam collimator. The detector predictions are obtained considering both the collided and uncollided components of the incoming radiation. The inverse problem is referred as an optimization problem. The function to be minimized, called an objective function, is calculated as the normalized-squared error between predicted and measured data. The predicted data are calculated by assuming a uniform distribution for the optical properties of the object. The objective function depends directly on the optical properties of the object; therefore, by minimizing it, the correct property distribution can be found. The minimization of this multidimensional function is performed with the Polack Ribiere conjugate-gradient technique that makes use of the gradient of the function with respect to the cross sections of the internal cells of the domain. The forward and inverse models have been successfully tested against numerical results obtained with MCNP (Monte Carlo Neutral Particles) showing excellent agreements. The reconstructions of several objects were successful. In the case of a single intrusion, TNTs (Tomography Neutron Transport using Scattering) was always able to detect the intrusion. In the case of the double body object, TNTs was able to reconstruct partially the optical distribution. The most important defect, in terms of gradient, was correctly located and reconstructed. Difficulties were discovered in the location and reconstruction of the second defect. Nevertheless, the results are exceptional considering they were obtained by lightening the object from only one side. The use of multiple beams around the object will significantly improve the capability of TNTs since it increases the number of constraints for the minimization problem.
机译:断层扫描是指通过从许多不同方向照亮对象而收集的透射或反射数据对对象进行的横截面成像。经典层析成像无法重建厚散射物体的光学特性,因为它无法充分说明离开样品的中子束强度的散射分量。我们提出了一种计算机断层扫描的新方法,该方法对从穿过光学厚物体的光束产生的透射图像和散射图像进行反问题分析。这个反问题利用了基于中子输运理论的高效计算的二维正向问题,该问题有效地计算了物体边缘周围的探测器读数。正向问题解决方案使用步进特性(SC)码,每个单元具有已知的非冲突源,零边界通量条件和Sn离散化用于角度依赖性。在给定光束和光束准直仪的特性和位置的情况下,通过使用精确的离散化方案执行未碰撞光源的计算。同时考虑入射辐射的碰撞分量和非碰撞分量来获得检测器预测。反问题称为优化问题。将要最小化的函数(称为目标函数)作为预测和测量数据之间的归一化平方误差进行计算。通过假设物体的光学特性均匀分布来计算预测数据。目标函数直接取决于物体的光学特性;因此,通过最小化它,可以找到正确的属性分布。使用Polack Ribiere共轭梯度技术执行此多维函数的最小化,该技术利用函数相对于域内部单元的横截面的梯度。正向和逆向模型已经成功地针对使用MCNP(蒙特卡洛中性粒子)获得的数值结果进行了测试,显示出极好的一致性。几个物体的重建是成功的。在单个入侵的情况下,TNT(使用散射的层析中子传输)始终能够检测到入侵。在双体物体的情况下,TNT能够部分重建光学分布。就梯度而言,最重要的缺陷是正确定位和重建的。在第二个缺陷的定位和重建中发现了困难。但是,考虑到仅通过从一侧照亮物体获得的结果,结果还是非常出色的。在目标周围使用多束光束将显着提高TNT的能力,因为它增加了最小化问题的约束数量。

著录项

  • 作者

    Scipolo Vittorio;

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  • 年度 2005
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  • 原文格式 PDF
  • 正文语种 en_US
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