Facilidades de códigos de Monte Carlo para obter CSR
DOI:
https://doi.org/10.15392/bjrs.v7i3B.891Keywords:
Simulação, Monte Carlo, modelagem, camada semiredutoraAbstract
O uso da técnica de modelagem matemática pelo método de Monte Carlo (MC) utiliza funções probabilísticas e números "aleatórios" para a realização de cálculos que simulam sistemas físicos, como o transporte de partículas radioativas. A determinação das primeiras e segundas camadas semiredutoras para um espectro determinado e uma distância pré-definida testou a verificou as vantagens e desvantagens de cada código na resolução de uma tarefa comum. Os resultados foram coerentes, mas discrepantes entre si entre 2,5 e 6,0 %, concluindo que os quatro códigos são poderosos e de fácil utilização, requerendo pouco conhecimento de linguagem computacional, inicialmente.
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