Browse > Article
http://dx.doi.org/10.1016/j.net.2020.06.004

Optimization study of a clustering algorithm for cosmic-ray muon scattering tomography used in fast inspection  

Hou, Linjun (Xi'an Research Institute of Hi-Tech)
Huo, Yonggang (Xi'an Research Institute of Hi-Tech)
Zuo, Wenming (Xi'an Research Institute of Hi-Tech)
Yao, Qingxu (Xi'an Research Institute of Hi-Tech)
Yang, Jianqing (Xi'an Research Institute of Hi-Tech)
Zhang, Quanhu (Xi'an Research Institute of Hi-Tech)
Publication Information
Nuclear Engineering and Technology / v.53, no.1, 2021 , pp. 208-215 More about this Journal
Abstract
Cosmic-ray muon scattering tomography (MST) technology is a new radiation imaging technology with unique advantages. As the performance of its image reconstruction algorithm has a crucial influence on the imaging quality, researches on this algorithm are of great significance to the development and application of this technology. In this paper, a fast inspection algorithm based on clustering analysis for the identification of the existence of nuclear materials is studied and optimized. Firstly, the principles of MST technology and a binned clustering algorithm were introduced, and then several simulation experiments were carried out using Geant4 toolkit to test the effects of exposure time, algorithm parameter, the size and structure of object on the performance of the algorithm. Based on these, we proposed two optimization methods for the clustering algorithm: the optimization of vertical distance coefficient and the displacement of sub-volumes. Finally, several sets of experiments were designed to validate the optimization effect, and the results showed that these two optimization methods could significantly enhance the distinguishing ability of the algorithm for different materials, help to obtain more details in practical applications, and was therefore of great importance to the development and application of the MST technology.
Keywords
Radiation tomography; Algorithm optimization; Muon scattering tomography; Nuclear safety;
Citations & Related Records
연도 인용수 순위
  • Reference
1 J. Perry, M. Azzouz, J. Bacon, et al., Imaging a nuclear reactor using cosmic ray muons, J. Appl. Phys. 113 (18) (2013), 184909.   DOI
2 K.A. Olive, K. Agashe, C. Amsler, et al., Review of particle physics, Chin. Phys. C 38 (9) (2014), 090001.   DOI
3 K.N. Borozdin, G.E. Hogan, C. Morris, et al., Surveillance: radiographic imaging with cosmic-ray muons, Nature 422 (2003) 277-278.
4 J.M. Durham, E. Guardincerri, C.L. Morris, et al., Tests of cosmic ray radiography for power industry applications, AIP Adv. 5 (2015), 067111.   DOI
5 T. Sugita, J. Bacon, Y. Ban, et al., Cosmic-ray muon radiography of UO2 fuel assembly, J. Nucl. Sci. Technol. 51 (7-8) (2014) 1024-1031.   DOI
6 C.L. Morris, J. Bacon, Y. Ban, et al., Analysis of muon radiography of the Toshiba nuclear critical assembly reactor, Appl. Phys. Lett. 104 (2) (2014), 024110.   DOI
7 L.J. Schultz, G.S. Blanpied, K.N. Borozdin, et al., Statistical reconstruction for cosmic ray muon tomography, IEEE Trans. Image Process. 16 (8) (2007) 1985-1993.   DOI
8 S. Agostinelli, J. Allison, K. Amako, et al., GEANT4-a simulation toolkit, Nucl. Instrum. Methods Phys. Res. A 506 (3) (2003) 250-303.   DOI
9 K.N. Borozdin, T.J. Asaki, R. Chartrand, et al., Information extraction from muon radiography data, Los Alamos Natl. Lab. (2004). LA-UR-04-3985.
10 C. Thomay, J.J. Velthuis, P. Baesso, et al., A novel technique to detect special nuclear material using cosmic rays, in: 2012 IEEE Nuclear Science Symposium and Medical Imaging Conference, Anaheim, CA, USA, 27 Oct.-3 Nov, 2012.
11 C. Thomay, J.J. Velthuis, P. Baesso, et al., A binned clustering algorithm to detect high-Z material using cosmic muons, J. Instrum. 8 (10) (2013), P10013.   DOI
12 J. Allison, K. Amako, J. Apostolakis, et al., Geant4 developments and applications, IEEE Trans. Nucl. Sci. 53 (1) (2006) 270-278.   DOI
13 C. Hagmann, D. Lange, D. Wright, Cosmic-ray shower generator (CRY) for Monte Carlo transport codes, in: 2007 IEEE Nuclear Science Symposium Conference, Honolulu, HI, USA, 26 Oct.-3 Nov, 2007.
14 L.J. Schultz, et al., Image reconstruction and material Z discrimination via cosmic ray muon radiography, Nucl. Instrum. Methods Phys. Res. A 519 (3) (2004) 687-694.   DOI