2016
DOI: 10.26565/2312-4334-2016-2-01
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The Application of the Genetic Algorithm-Back Propagation Neural Network Algorithm in the High-Energy Physics

M. Y. El-Bakry,
E. A. El-Dahshan,
A. Radi
et al.

Abstract: Multiparticle production mechanism is one of the most phenomena that the high-energy physics concerns. In this work, the evolutionary genetic algorithm (GA) is used to optimize the parameters of the back-propagation neural networks (BPNN). The hybrid evolutionary-neuro model (GA-BPNN) was trained to simulate the rapidity distribution 1/N(dN/dY) of positive and negative pions p-Au, p-Ag and p-Xe for p-Ar, p-Xe interactions at lab momentum Plab =100 GeV/c. Also, for total charged, positive and negative pions for… Show more

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