Title of article :
Particle filters for state and parameter estimation in batch processes
Author/Authors :
Tao Chen، نويسنده , , Julian Morris and Elaine Martin، نويسنده ,
Abstract :
In process engineering, on-line state and parameter estimation is a key component in the modelling of batch processes. However,
when state and/or measurement functions are highly non-linear and the posterior probability of the state is non-Gaussian, conventional
filters, such as the extended Kalman filter, do not provide satisfactory results. This paper proposes an alternative approach
whereby particle filters based on the sequential Monte Carlo method are used for the estimation task. Particle filters are initially
described prior to discussing some implementation issues, including degeneracy, the selection of the importance density and the
number of particles. A kernel smoothing approach is introduced for the robust estimation of unknown and time-varying model
parameters. The effectiveness of particle filters is demonstrated through application to a benchmark batch polymerization process
and the results are compared with the extended Kalman filter.
Keywords :
Batch processes , parameter estimation , Particle filters , sequential Monte Carlo , state estimation
Journal title :
Astroparticle Physics