Determinação de um Índice de Condição Atmosférica com Ferramentas da Lógica Paraconsistente Anotada Evidencial

Autores

DOI:

https://doi.org/10.33448/rsd-v11i16.38428

Palavras-chave:

Índice de condição atmosférica; Sistema especialista; Lógica paraconsistente; Grau de certeza; Grau de incerteza.

Resumo

O objetivo deste artigo é propor a criação de um índice de condição atmosférica utilizando ferramentas de Inteligência Artificial. A condição atmosférica pode ser obtida a partir de parâmetros que as comunidades científicas – meio ambiente, saúde, segurança do trabalho – adotam para os diferentes poluentes da atmosfera. Os parâmetros foram obtidos da literatura científica e de especialistas, que foram consultados sobre os dados objetivos para permitir uma análise por meio de um sistema especialista. Como os dados são de fontes altamente imprecisas, os sistemas de lógica clássica (binários) não se encaixam. Optamos por utilizar a Lógica Paraconsistente Anotada Evidenciada. Essa lógica não clássica acomoda naturalmente imprecisões, contradições e paracompletudes sem o perigo de banalização. Assim, a Lógica Paraconsistente Anotada Evidencial pode ser idealmente adotada como uma ferramenta valiosa para o controle das condições atmosféricas, principalmente em grandes metrópoles.

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Publicado

14/12/2022

Como Citar

CARVALHO, F. R. de .; ABE, J. M.; BONILLA, S. H.; ALMEIDA, C. M. V. B. de .; GIANNETTI, B. F. . Determinação de um Índice de Condição Atmosférica com Ferramentas da Lógica Paraconsistente Anotada Evidencial. Research, Society and Development, [S. l.], v. 11, n. 16, p. e442111638428, 2022. DOI: 10.33448/rsd-v11i16.38428. Disponível em: https://rsdjournal.org/index.php/rsd/article/view/38428. Acesso em: 25 nov. 2024.

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Engenharias