Chinese Journal of Chemical Engineering, Vol.16, No.1, 48-51, 2008
Online predictive monitoring and prediction model for a periodic process through multiway non-Gaussian modeling
A new on-line predictive monitoring and prediction model for periodic biological processes is proposed using the multiway non-Gaussian modeling. The basic idea of this approach is to use multiway non-Gaussian modeling to extract some dominant key components from daily normal operation data in a periodic process, and subsequently combining these components with predictive statistical process monitoring techniques. The proposed predictive monitoring method has been applied to fault detection and diagnosis in the biological wastewater-treatment process, which is based on strong diurnal characteristics. The results show the power and advantages of the proposed predictive monitoring of a continuous process using the multiway predictive monitoring concept, which is thus able to give very useful conceptual results for a daily monitoring process and also enables a more rapid detection of the process fault than other traditional monitoring methods.
Keywords:inferential sensing;multiway modeling;non-Gaussian distribution;online predictive monitoring;process supervision;wastewater treatment process