Modeling of non-stationary autoregressive alpha-stable processes by particle filters
Academic Article
Publication Date:
2008
abstract:
In the literature, impulsive signals are mostly modeled by symmetric alpha-stable processes. To represent their temporal dependencies, usually autoregressive models with time-invariant coefficients are utilized. We propose a general sequential Bayesian odeling methodology where both unknown autoregressive coefficients and distribution parameters can be estimated successfully, even when they are time-varying. In contrast to most work in the literature on signal processing with alpha-stable distributions, our work is general and models also skewed alpha-stable processes. Successful performance of our method is demonstrated by computer simulations. We support our empirical results by providing posterior Cramer-Rao lower bounds. The proposed method is also tested on a practical application where seismic data events are modeled.
Iris type:
01.01 Articolo in rivista
Keywords:
Alpha-stable distributions; Non-stationary processes; Particle filtering; Sequential Monte Carlo; Bayesian estimation; Impulsive processes; Skewed processes
List of contributors:
Kuruoglu, ERCAN ENGIN
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