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Radiation Effects and Defects in Solids
Incorporating Plasma Science and Plasma Technology
Volume 174, 2019 - Issue 3-4
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Articles

Application of neural network for predicting photon attenuation through materials

Pages 171-181 | Received 15 Jul 2017, Accepted 05 Nov 2018, Published online: 28 Nov 2018
 

ABSTRACT

Photon attenuation prediction in composite materials usually requires a great expert knowledge and time-consuming calculations with complex procedures especially in experimental arrangements. An artificial neural network can be applied to predict exactly the value of mass attenuation at different energies. For training of the network a neural model was designed with chemical composition and molecular cross-section of samples as neural input, while the photon attenuation coefficient was its output. The method was applied for different composite materials with different chemical compositions. The results of mass attenuation coefficients were compared with the experimental and theoretical data for the same samples and a good agreement has been observed. The results indicate that this process can be followed to determine the data on the attenuation of gamma-rays with the several energies in different materials.

Disclosure statement

No potential conflict of interest was reported by the author.

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