Um comparativo entre a utilização de redes neurais perceptron e redes neurais profundas na identificação de radionuclídeos em espectrometria gama

Authors

DOI:

https://doi.org/10.15392/bjrs.v8i1.1132

Keywords:

redes neurais, redes neurais profundas, caracterização, espectrometria gama

Abstract

Apresentamos os resultados da comparação entre uma Rede Neural Profunda e uma Rede Neural Perceptron na classificação de espectros gama obtidos utilizando um detector de germânio hiper-puro. Utilizando dados de diversas fontes seladas  (Am-241, Ba-133, Cd-109, Co-57, Co-60, Cs-137, Eu-152, Mn-54, Na-24, and Pb-210) foram gerados uma lista extensa de espectros para treino e validação contendo, respectivamente, 500 e 160 espectros, onde foram mesclados até três radionuclídeos em um único espectro. Depois de 250 épocas de treino foram validadas a acurácia de cada um dos modelos utilizando o conjunto de validação. O modelo de rede neural profunda obteve uma acurácia de classificação de 96,25% enquanto a rede neural perceptron obteve uma acurácia de 80,62%. Os resultados mostram um desempenho robusto e consistentemente melhor das redes neurais profundas, frente as redes neurais perceptron.

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Published

2020-03-22

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Articles

How to Cite

Um comparativo entre a utilização de redes neurais perceptron e redes neurais profundas na identificação de radionuclídeos em espectrometria gama. Brazilian Journal of Radiation Sciences, Rio de Janeiro, Brazil, v. 8, n. 1, 2020. DOI: 10.15392/bjrs.v8i1.1132. Disponível em: https://www.bjrs.org.br/revista/index.php/REVISTA/article/view/1132.. Acesso em: 7 may. 2024.

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