Bibliometric Analysis on Industry 4.0 in Chemical Engineering

Authors

  • Igor Oliveira Bachieti Universidade de São Paulo
  • Carlos Minoru Nascimento Yoshioka Universidade Federal do Espírito Santo
  • Ana Beatriz Neves Brito Universidade Federal do Espírito Santo

Keywords:

Artificial Intelligence, Automation, Chemical engineering , Internet of Things, Machine Learning Automation, Chemical engineering, Internet of Things , Machine Learning

Abstract

This work appoaches Industry 4.0 in relation to Chemical Engineering, carrying out a bibliometric analysis of articles with keywords such as "Artificial Intelligence," "Automation," "Chemical Engineering," "Internet of Things," and "Machine Learning." The methodology involves a bibliographic review from the period of 2014 to 2022, and demonstrates an exponential growth in publications

Author Biographies

Igor Oliveira Bachieti, Universidade de São Paulo

Graduado em Engenharia Química pela Universidade Federal do Espírito Santo (2024), e em Engenharia de Produção pela Centro Universitário Vale do Cricaré (2024) e atualmente é pós graduando de MBA em Gestão de Negócios pela Universidade de São Paulo.

Carlos Minoru Nascimento Yoshioka, Universidade Federal do Espírito Santo

Possui graduação em Engenharia Química pela Universidade Federal do Pará (2001), mestrado em Engenharia Química pela Universidade Federal de São Carlos (2003) e doutorado em Engenharia Química pela Universidade Federal de São Carlos (2008). Atualmente é professor associado da Universidade Federal do Espírito Santo. Tem experiência na área de Engenharia Química, com ênfase em Área de Catálise, atuando principalmente nos seguintes temas: Peneiras moleculares.

Ana Beatriz Neves Brito, Universidade Federal do Espírito Santo

Possui graduação em Engenharia Química pela Universidade Federal de Uberlândia (2000), mestrado em Engenharia Química pela Universidade Federal de Uberlândia (2002) e doutorado em Engenharia Química pela Universidade Federal de São Carlos (2007). Lotada no DET/CEUNES/UFES desde outubro de 2009. Foi coordenadora do Curso de Engenharia Química do CEUNES/UFES de 2013 a 2017. Atuou no PPGEN/CEUNES/UFES de 2012 a 2015. Foi vice-diretora do Centro Universitário Norte do Espírito Santo da Universidade Federal do Espírito Santo (CEUNES/UFES) de agosto/2018 a agosto/2022. Professor Associado IV da Universidade Federal do Espírito Santo. Tem experiência na área de Engenharia Química, com ênfase em Operações de Separação e Mistura.

References

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Published

2025-03-26

How to Cite

Oliveira Bachieti, I., Minoru Nascimento Yoshioka, C., & Neves Brito, A. B. (2025). Bibliometric Analysis on Industry 4.0 in Chemical Engineering. Revista Científica Foz, 8(1), 23–44. Retrieved from https://revista.ivc.br/index.php/revistafoz/article/view/344