Title of article :
Subspace identification based inferential control applied to a continuous pulp digester
Author/Authors :
Raja Amirthalingam and Jay H. Lee، نويسنده ,
Pages :
10
From page :
397
To page :
406
Abstract :
The idea of constructing a data-driven stochastic system model through subspace identi®cation for the purpose of inferential control is investigated. Various available methods for designing an inferential controller are discussed and their limitations are brought out, particularly in applications involving multi-variable processes. Practical issues that arise in identifying a system model geared toward inferential control using a subspace method are discussed. They include: handling of nonstationary disturbances, handling of multi-rate measurements/missing data, and secondary measurement selection. With the identi®ed stochastic system model, a multi-rate Kalman ®lter can be designed and coupled with a model predictive controller. The method is applied to a continuous pulp digester, which is a complex distributed parameter system involving heterogeneous reactions. The application study indicates much potential for the data-based approach.
Keywords :
Inferential control , Kappa number control , continuous digester , Kamyr digester , Subspace identi®cation
Journal title :
Astroparticle Physics
Record number :
401127
Link To Document :
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