The structural identification as a proposed of classification of variables for the reconciliation of industrial data

Authors

  • Antonio Martins Oliveira Júnior Universidade Federal de Sergipe
  • José Carlos Costa da Silva Pinto Universidade Federal do Rio de Janeiro, PEQ/COPPE
  • Enrique Luis Lima Universidade Federal do Rio de Janeiro, PEQ/COPPE

Keywords:

Data reconciliation, Variable classification, Industrial Process

Abstract

Data reconciliation is strongly affected by formulation problem, statistical results interpretation and optimization performance. This must be valued by a carefully variable classification. Due to of the complexity of integrated process and the large volume of available data in highly automated plants; classification algorithms are increasing used nowadays. They are applied to the revamps, design and monitoring systems and to reduce the dimension of the data reconciliation problem. A new algorithm is described which can help the engineer find efficient strategies for the classification problem allied with the mathematical formulation. Some structural properties are discussed and illustrated. The new structural identification algorithm is described. There is a large economical incentive for the variable robust classification, because a defective procedure will request an additional instrumentation.

Author Biographies

Antonio Martins Oliveira Júnior, Universidade Federal de Sergipe

Departamento de Tecnologia de Alimentos, Programa de Pós-Graduação em Engenharia Química, Doutorado em Engenharia Química em 2006 no PEQ/COPPE/UFRJ.

 

José Carlos Costa da Silva Pinto, Universidade Federal do Rio de Janeiro, PEQ/COPPE

Professor do PEQ/COPPE/UFRJ

Enrique Luis Lima, Universidade Federal do Rio de Janeiro, PEQ/COPPE

Professor do PEQ/COPPE/UFRJ

Published

2012-01-16

How to Cite

Oliveira Júnior, A. M., Pinto, J. C. C. da S., & Lima, E. L. (2012). The structural identification as a proposed of classification of variables for the reconciliation of industrial data. Scientia Plena, 7(11). Retrieved from https://scientiaplena.org.br/sp/article/view/381

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