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Z箍缩中子编码诊断系统模拟平台搭建
引用本文:贾清刚,张天奎,张凤娜,胡华四.Z箍缩中子编码诊断系统模拟平台搭建[J].强激光与粒子束,2013,25(1):177-181.
作者姓名:贾清刚  张天奎  张凤娜  胡华四
作者单位:1.西安交通大学 核科学与技术学院, 西安 71 0049
基金项目:国家自然科学基金项目(10975113)
摘    要:开发了基于Geant4的Z箍缩中子编码成像系统模拟平台,实现聚变中子编码成像诊断系统各关键部件的完整模拟。获得了低中子产额(约1010量级)下,中子经编码孔编码后在闪烁体阵列中形成的发光分布图像。利用维纳滤波、Richardson-Lucy(RL)及遗传算法(GA)对低中子产额下获得的极低信噪比图像进行重建,并对信噪比、中子产额及重建效果进行了对比研究,结果表明:遗传算法对低信噪比中子编码图像的重建具有很强的鲁棒性;中子编码图像的信噪比与遗传算法重建结果的准确性呈正比。

关 键 词:Z箍缩    蒙特卡罗方法    信噪比    图像重建
收稿时间:2012/6/26

Development of Monte Carlo code for Z-pinch driven fusion neutron imaging diagnosis system simulation
Jia Qinggang,Zhang Tiankui,Zhang Fengna,Hu Huasi.Development of Monte Carlo code for Z-pinch driven fusion neutron imaging diagnosis system simulation[J].High Power Laser and Particle Beams,2013,25(1):177-181.
Authors:Jia Qinggang  Zhang Tiankui  Zhang Fengna  Hu Huasi
Institution:1.School of Nuclear Science and Technology,Xi’an Jiaotong University,Xi’an 710049,China
Abstract:The model of Z-pinch driven fusion imaging diagnosis system was set up by a Monte Carlo code based on the Geant4 simulation toolkit. All physical processes that the reality involves are taken into consideration in simulation. The light image of low neutron yield (about 1010) pill was obtained. Three types of image reconstruction algorithm, i.e. Richardson-Lucy, Wiener filtering and genetic algorithm were employed to reconstruct the neutron image with a low signal to noise ratio (SNR) and yield. The effects of neutron yields and the SNR on reconstruction performance were discussed. The results show that genetic algorithm is very robust for reconstructing neutron images with a low SNR. And the index of reconstruction performance and the image correlation coefficient using genetic algorithm, are proportional to the SNR of the neutron coded image.
Keywords:Z-pinch  Monte Carlo method  signal to noise ratio  image reconstruction
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