Detection of Process Model Change in Pls Based Performance Monitoring

نویسندگان

  • Sukhbinder Kumar
  • Elaine B. Martin
  • Julian Morris
چکیده

The detection of process changes using a partial least squares (PLS) based monitoring scheme can be achieved through the interrogation of two metrics, Hotelling's 2 T and the Q-statistic. The Q-statistic has been shown to be insensitive to small changes in the process model parameters. In this paper, a modified statistic based on the local approach is proposed to detect changes in the model parameters in a PLS based monitoring scheme. The performance of the Q-statistic is compared with the modified statistic through their application to fault detection in a continuous stirred tank reactor. Copyright 2002 IFAC.

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تاریخ انتشار 2002