Title of article :
Radiation dose for external exposure to gamma-ray using artificial neural network and MC simulation
Author/Authors :
Elhamdi, K Nuclear Physics and High Energy Research Unit - FST - Campus Universitaire El-Manar, 2092 El Manar Tunis , Bhar, M Nuclear Physics and High Energy Research Unit - FST - Campus Universitaire El-Manar, 2092 El Manar Tunis , Belkadhi, K Nuclear Physics and High Energy Research Unit - FST - Campus Universitaire El-Manar, 2092 El Manar Tunis , Manai, K Nuclear Physics and High Energy Research Unit - FST - Campus Universitaire El-Manar, 2092 El Manar Tunis
Abstract :
Background: The computation of the absorbed dose in air allows the estimation of the concentrations of radionuclides in the soil and the assessment of the external
exposure of the human body. The development of numerical models describing
gamma ray transport in the environment provides more precise methods to analyze
the pathways of external radiation dose. Material and Method: A combined method
using Artificial Neural Network (ANN) and Monte Carlo Simulation (MC) has been
developed to calculate the absorbed dose rate in air for photon emitters from natural
radionuclides. We proposed a new class of trained ANN to GEANT4 to calculate the
probability, for generated photon sources, to reach the detector. Only photons with
high probability were tracked in MC Simulation. Results: A significant reduction of
computation time was reached. Unscattered flux and gamma-dose-rate conversion
factors were calculated and compared to previous works. Conclusion: The use of this
method overcomes the problem of the long duration of computation time, obtaining a good agreement with previous works and efficient results of the dose rate conversion factor.
Keywords :
Gamma ray , soil , exposure , dose , artificial neural network
Journal title :
International Journal of Radiation Research