Hot metal temperature prediction and simulation by fuzzy logic in a blast furnace

Authors

  • Miguel Angel Romero Centro Nacional de Investigaciones Metalúrgicas, CENIM (CSIC)
  • Juan Jiménez Centro Nacional de Investigaciones Metalúrgicas, CENIM (CSIC)
  • Javier Monchón Centro Nacional de Investigaciones Metalúrgicas, CENIM (CSIC)
  • José Luis Menéndez ACERALIA
  • Antonio Formoso Centro Nacional de Investigaciones Metalúrgicas, CENIM (CSIC)
  • Francisca Bueno Centro Nacional de Investigaciones Metalúrgicas, CENIM (CSIC)

DOI:

https://doi.org/10.3989/revmetalm.2000.v36.i1.555

Keywords:

Blast furnace, Fuzzy logic, Forecasting, Simulation, Hot metal temperature

Abstract


This work describes the development and further validation of a model devoted to blast furnace hot metal temperature forecast, based on Fuzzy logic principles. The model employs as input variables, the control variables of an actual blast furnace: Blast volume, moisture, coal injection, oxygen addition, etc. and it yields as a result the hot metal temperature with a forecast horizon of forty minutes. As far as the variables used to develop the model have been obtained from data supplied by an actual blast furnace sensors, it is necessary to properly analyze and handle such data. Especial attention was paid to data temporal correlation, fitting by interpolation the different sampling rates. In the training stage of the model the ANFIS (Adaptive Neuro-Fuzzy Inference System) and the Subtractive Clustering algorithms have been used.

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Published

2000-02-28

How to Cite

Romero, M. A., Jiménez, J., Monchón, J., Menéndez, J. L., Formoso, A., & Bueno, F. (2000). Hot metal temperature prediction and simulation by fuzzy logic in a blast furnace. Revista De Metalurgia, 36(1), 40–46. https://doi.org/10.3989/revmetalm.2000.v36.i1.555

Issue

Section

Technical Notes

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