MODELING AND OPTIMIZATION OF AN INTERVAL TYPE 2 FUZZY LOGIC SYSTEM FOR A CERAMIC COATING PROCESS

Authors

  • Gerardo Daniel Olvera-Romero Calle Ciencia y Tecnología | Ciudad Universitaria
  • Rolando Javier Praga-Alejo Calle Ciencia y Tecnología | Ciudad Universitaria https://orcid.org/0000-0001-5512-2732
  • David Salvador Gonzalez-Gonzalez Ciudad Universitaria

DOI:

https://doi.org/10.23055/ijietap.2023.30.4.8973

Abstract

Process control is essential in Industry 4.0, and process modeling is an effective way to achieve it. For complex processes with high variability and uncertainty, Interval Type 2 Fuzzy Logic Systems are an efficient alternative, but they lack an appropriate methodology for selecting the Footprint of Uncertainty width. This work proposes a method that uses a genetic algorithm to optimize the Footprint of Uncertainty width and evaluates various Type-Reduction methods. ANOVA and R^2 and R_prediction^2 statistics are used to verify the model, which is applied to a manufacturing process that adjusts the density of a ceramic coating. The results indicate that the optimized model (R^2=0.886) outperforms the non-optimized model (R^2=0.796), linear regression (R^2=0.498), and backpropagation neural networks (R^2=0.641). Additionally, a stability analysis of the proposed model was performed using cross-validation, obtaining an R_prediction^2=0.758, which indicates that the genetic algorithm-based method can be a suitable option for modeling complex processes.

Published

2023-08-27

How to Cite

Olvera-Romero, G. D., Praga-Alejo, R. J., & Gonzalez-Gonzalez, D. S. (2023). MODELING AND OPTIMIZATION OF AN INTERVAL TYPE 2 FUZZY LOGIC SYSTEM FOR A CERAMIC COATING PROCESS. International Journal of Industrial Engineering: Theory, Applications and Practice, 30(4). https://doi.org/10.23055/ijietap.2023.30.4.8973

Issue

Section

Manufacturing and Control

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