Bibliography
Conference Paper (international conference)
Bayesian Estimation of Forgetting Factor in Adaptive Filtering and Change Detection
,
: Proceedings of the IEEE Statistical Signal Processing Workshop 2012, p. 197-200
: 2012 IEEE Statistical Signal Processing Workshop, (Ann Arbor, US, 05.08.2012-08.08.2012)
: GAP102/11/0437, GA ČR
: Marginalized particle filter, Rao-Blackwellization, maximum entropy
(eng): An adaptive filter is derived in a Bayesian framework from the assumption that the difference in the parameter distribution from one time to another is bounded in terms of the Kullback-Leibler divergence. We show an explicit link to the general concepts of exponential forgetting, and outline the details for a linear Gaussian model with unknown parameter and covariance. We extend the problem to an unknown forgetting factor, where we provide a particular prior that allows for abrupt changes in forgetting, which is useful in change detection problems. The Rao-Blackwellized particle filter is used for the implementation, and its performance is assessed in a simulation of system with abrupt changes of parameters.
: BD