Title of article :
The use of artificial neural networks to distinguish naturally occurring radioactive materials from unauthorized radioactive materials using a plastic scintillation detector
Author/Authors :
Ziyaee Sisakht, Reza Faculty of Nuclear Engineering - Shahid Beheshti University, Tehran, Iran , Abbasi Davani, Fereydoun Faculty of Nuclear Engineering - Shahid Beheshti University, Tehran, Iran , Ghaderi, Rouhollah Faculty of Nuclear Engineering - Shahid Beheshti University, Tehran, Iran
Abstract :
Distinguishing naturally occurring radioactive (e.g. ceramics, fertilizers, etc.) from unauthorized materials (e.g. high enriched uranium, Pu-239, etc.) to reduce false alarms is a prominent characteristic of radiation monitoring port. By employing the energy windowing method for the spectrum correspond to the simulation of a plastic scintillator detector using the MCNPX Monte Carlo code together with an artificial neural network, the present work proposes a method for distinguishing naturally occurring materials and K-40 from four unauthorized sources including high enriched uranium and Pu-239 (as special nuclear materials), Cs-137 (as an example of dirty bombs), and depleted uranium.
Keywords :
Energy windowing , Naturally occurring radioactive , Plastic scintillation detector , Radiation monitoring ports , Gamma ray detection , Radiation monitoring ports
Journal title :
Radiation Physics and Engineering