Robust filtering of stochastic
processes
Mikhail Moklyachuk,
Aleksandr Masyutka Department of Probability Theory and Mathematical Statistics,
Kyiv National Taras Shevchenko University, Kyiv 01033, Ukraine
Аннотация:
The considered problem is estimation of the unknown value of the
functional $A\vec{\xi}=\int^\infty_0\vec{a}(t)\vec{\xi}(-t)dt$ which depends on the unknown values of a multidimensional stationary stochastic process
$\vec{\xi}(t)$ based on
observations of the process
$\vec{\xi}(t)+ vec{\eta}(t)$ for
$t\leq0.$ Formulas are obtained for calculation the mean square error and the spectral characteristic of the optimal estimate of the functional under the condition
that the spectral density matrix
$F(\lambda)$ of the signal process
$\vec{\xi}(t)$ and
the spectral density matrix
$G(\lambda)$ of the noise process
$\vec{\eta}(t)$ are known.
The least favorable spectral densities and the minimax-robust spectral characteristic of the optimal estimate of the functional
$A\vec{\xi}$ are
found for concrete classes
$D = D_F\times D_G$ of spectral densities under
the condition that spectral density matrices
$F(\lambda)$ and
$G(\lambda)$ are not
known, but classes
$D = D_F\times D_G$ of admissible spectral densities are
given.
Ключевые слова:
Stationary stochastic process, filtering, robust estimate,
observations with noise, mean square error, least favorable spectral densities, minimax-robust spectral characteristic.
MSC: 60G10,
62M20,
60G35,
93E10,
93E11
Язык публикации: английский