Análise bibliométrica do controle estatístico de processo (CEP) aplicado ao processo de fabricação

Autores

  • Antonio Karlos Araújo Valença Universidade Federal da Paraíba (UFPB), João Pessoa, PB, Brasil. https://orcid.org/0000-0001-6994-4577
  • Rodrigo César Reis de Oliveira Universidade Federal de Alagoas (UFAL), Maceió, AL, Brasil.

DOI:

https://doi.org/10.14488/1676-1901.v23i4.5096

Palavras-chave:

Controle Estatístico de Processo, Processo de Fabricação, Bibliometria, CEP

Resumo

Neste trabalho, foi realizada uma extensa revisão bibliométrica sobre a produção científica de controle estatístico de processo, aplicada à indústria de transformação, mapeando as principais pesquisas da literatura, bem como os principais periódicos que estão publicando esta pesquisa. O controle estatístico de processo é uma das principais ferramentas que permitem aos gestores de produção determinar se os processos atendem aos requisitos pré-determinados pelos clientes, proporcionando melhor qualidade do produto e do processo. A análise ilustra a evolução da pesquisa nas últimas décadas, os principais periódicos para publicação, o nível de concentração ou fragmentação da comunidade científica e a densidade geográfica das colaborações em pesquisa. Por fim, também são apresentados os principais temas que têm sido abordados pela comunidade científica que debatem o CEP em aplicações de manufatura e pesquisas futuras para o direcionamento deste tema.

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Biografia do Autor

Antonio Karlos Araújo Valença, Universidade Federal da Paraíba (UFPB), João Pessoa, PB, Brasil.

Doutorando em Engenharia Mecânica na Universidade Federal da Paraíba. Mestrado em Engenharia Mecânica com ênfase na área de Processos de Fabricação pela Universidade Federal da Paraíba (PPGEM/UFPB). Graduado em Engenharia de Produção pela Faculdade de Administração e Negócios de Sergipe (FANESE). Ex-Professor Substituto (2022-2023) no Departamento de Engenharia de Produção da Universidade Federal do Rio Grande do Norte (DEP/UFRN).

Rodrigo César Reis de Oliveira, Universidade Federal de Alagoas (UFAL), Maceió, AL, Brasil.

Doutor em Administração pelo Núcleo de Pós-Graduação em Administração da UFBA (NPGA-UFBA). Mestre em Administração pelo Programa de Pós-graduação em Administração da UFPE (PROPAD-UFPE). Graduado em Administração pela Universidade Federal da Paraíba. Professor Adjunto da Faculdade de Economia, Administração e Contabilidade (FEAC), da Universidade Federal de Alagoas. Professor de graduação e do Mestrado Profissional em Administração Pública (PROFIAP-UFAL).

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Publicado

20-03-2024

Como Citar

Valença, A. K. A., & Oliveira, R. C. R. de. (2024). Análise bibliométrica do controle estatístico de processo (CEP) aplicado ao processo de fabricação . Revista Produção Online, 23(4), 5096 . https://doi.org/10.14488/1676-1901.v23i4.5096

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