This assessment of impairment in drivers of carbon steel through intelligent system

Authors

  • Edgar Augusto Ruelas Santoyo Instituto Tecnológico Superior de Irapuato
  • Bertha Laura Vargas Rodríguez Instituto Tecnológico Superior de Irapuato
  • Juan Antonio Sánchez Márquez Universidad de Guanajuato

DOI:

https://doi.org/10.15381/idata.v18i2.12103

Keywords:

artificial neural network (ANN), digital image processing, fuzzy logic and materials

Abstract

This paper describes the development of an intelligent integrated system comprised of a fuzzy logic architecture developed from descriptive statistics and an artificial neural network Fuzzy ArtMap applied in pattern recognition with digital image processing. The studied patterns are from the microstructure of carbon steel SA 210 Grade A-1. The purpose is to estimate the damage present in the material from the determination of the physical state of the material. Studied patterns in the microstructure of the material were: pearlite lamellar, spheronization and graphitization. The results showed that the damage estimation and pattern recognition in the material were correctly predicted with the developed system compared to the human expert.

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Author Biographies

  • Edgar Augusto Ruelas Santoyo, Instituto Tecnológico Superior de Irapuato
    Docente del Departamento de Ingeniería Industrial en el Instituto Tecnológico Superior de Irapuato, Guanajuato, México.
  • Bertha Laura Vargas Rodríguez, Instituto Tecnológico Superior de Irapuato
    Docente del Departamento de Ingeniería Industrial en el Instituto Tecnológico Superior de Irapuato, Guanajuato, México.
  • Juan Antonio Sánchez Márquez, Universidad de Guanajuato
    Docente de la División de Ciencias Naturales y Exactas, Universidad de Guanajuato, Guanajuato, México.

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Published

2015-12-24

Issue

Section

Sistemas e Informática

How to Cite

This assessment of impairment in drivers of carbon steel through intelligent system. (2015). Industrial Data, 18(2), 113-120. https://doi.org/10.15381/idata.v18i2.12103