estimation of bremsstrahlung photon fluence from aluminum by artificial neural network

نویسندگان

i. akkurt suleyman demirel university, science and arts faculty physics department, isparta, turkey

k. gunoglu suleyman demirel university, science and arts faculty physics department, isparta, turkey

h.o. tekin suleyman demirel university, science and arts faculty physics department, isparta, turkey

z.n. demirci suleyman demirel university, science and arts faculty physics department, isparta, turkey

چکیده

background: as bremsstrahlung photon beam fluence is important parameter to be known in a photonuclear reaction experiment as the number of produced particle is strongly depends on photon fluence. materials and methods: photon production yield from different thickness of aluminum target has been estimated using artificial neural network (ann) model. target thickness and incoming electron energy has been used as input in ann model and the photon fluence was output. results: the results were estimated using ann model for three different thickness and compared with the results obtained by egs (electron gamma shower) simulation. conclusion: it can be concluded from this work that the bremsstrahlung photon fluence can be obtained using ann model. iran. j. radiat. res., 2012 10(1): 63-65

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عنوان ژورنال:
iranian journal of radiation research

جلد ۱۰، شماره ۱، صفحات ۶۳-۶۵

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