Development Of Portable Snms Detection System With D-D Neutron Source Based On Combination Of Noise Analysis And Threshold Energy Neutron Analysis Method

2018 IEEE NUCLEAR SCIENCE SYMPOSIUM AND MEDICAL IMAGING CONFERENCE PROCEEDINGS (NSS/MIC)(2018)

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摘要
Detection of hidden special nuclear materials (SNMs) used for nuclear explosives such as 235 U is important issue for nuclear security to counter terrorist threats. The interrogation systems used in a port and an airport has been developing in the world, and the active neutron-based interrogation system is the one of the candidates for this purpose. We are developing an active neutron-based interrogation system combined with radiation detectors and a D-D neutron source usable in seaports and airports. The D-D neutron source shown in Figs. 1 and 2 is a compact and light-weight portable discharge-type fusion neutron source called IECF (Inertial Electrostatic Confinement Fusion) device [1] . It provides 2.45 MeV mono-energetic neutrons whose production rate is more than 5x10 7 n/s in CW mode without using radioisotope such as tritium. An mportant advantage of IEC comes from the use of "gas target" and this enables stable high-power operation of IEC devices to produce copious amount of D-D neutrons in a compact system. We adopted new Threshold Energy Neutron Analysis (TENA) method and neutron and gamma-ray noise analysis method based on the variance-to-mean value method in the present interrogation system.
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关键词
mono-energetic neutrons,terrorist threats,Inertial Electrostatic Confinement Fusion,gas target,interrogation system,gamma-ray noise analysis method,compact system,IECF device,light-weight portable discharge-type fusion neutron source,compact weight portable discharge-type fusion neutron source,D-D neutron source usable,active neutron-based interrogation system,nuclear security,nuclear explosives,hidden special nuclear materials,Threshold Energy Neutron Analysis method,portable SNMs detection system,electron volt energy 2.45 MeV
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