info:eu-repo/semantics/article
A multivariate statistical process control procedure for BIAS identification in steady-state processes
Fecha
2008-08Registro en:
Sanchez, Mabel Cristina; Alvarez Medina, Carlos Rodrigo; Brandolin, Adriana; A multivariate statistical process control procedure for BIAS identification in steady-state processes; John Wiley & Sons Inc; Aiche Journal; 54; 8; 8-2008; 2082-2088
0001-1541
CONICET Digital
CONICET
Autor
Sanchez, Mabel Cristina
Alvarez Medina, Carlos Rodrigo
Brandolin, Adriana
Resumen
In this article, a multivariate statistical process control (MSPC) strategy, devoted to bias identification and estimation for processes operating under steady-state conditions, is presented. The technique makes use of the D statistic to detect the presence of biases. Besides, it uses a new decomposition of this statistic to identify the faulty sensors. The strategy is based only on historical process data. Neither process modeling nor assumptions about the probability distribution of measurement errors are required. In contrast to methods based on fundamental models, both redundant and nonredundant measurements can be examined to identify the presence of biases. The performance of the proposed technique is evaluated using data-reconciliation benchmarks. Results indicate that the technique succeeds in identifying single and multiple biases and fulfills three paramount issues to practical implementation in commercial software: robustness, uncertainty, and efficiency. © 2008 American Institute of Chemical Engineers.