A Virtual Sensor Approach to Estimate the Stainless Steel Final Chemical Characterisation

  1. Nimo, Damián
  2. González-Enrique, Javier
  3. Perez, David
  4. Almagro, Juan
  5. Urda, Daniel
  6. Turias, Ignacio J.
  1. 1 Department of Computer Science, University of Cadiz, Cadiz, Spain
  2. 2 Dpto. Técnico, Polígono Industrial Los Barrios ACERINOX Europa, S.A.U., Los Barrios, Spain
17th International Conference on Soft Computing Models in Industrial and Environmental Applications (SOCO 2022)

ISSN: 2367-3370 2367-3389

ISBN: 9783031180491 9783031180507

Ano de publicación: 2022

Páxinas: 350-360

Tipo: Achega congreso

DOI: 10.1007/978-3-031-18050-7_34 GOOGLE SCHOLAR lock_openAcceso aberto editor

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