Detail publikace

Estimation of parameters of one-step predictor with particle filter method

LEBEDA, A.

Originální název

Estimation of parameters of one-step predictor with particle filter method

Anglický název

Estimation of parameters of one-step predictor with particle filter method

Jazyk

en

Originální abstrakt

This paper is focused on estimation of the parameters of a system with non-Gaussian noise. Firstly, the Bayesian inference is described and the method of the particle filters is introduced which is directly based on the Bayesian inference. The particle filters method numrically solve a problem of a recursive Bayesian state estimator. Secondly, the method for transformation of a random variables is introduced which changes the relative likelihood of the particle filters according to the distribution of the measurement noise. Thirdly, recursive least square method is derived and linear one-step predictor is described. Fourthly, parameters of the one-step predictor are estimated online with two methods that were mention before. The outputs of both methods are compared and results are discussed. The particle filters method with random variables is analyzed.

Anglický abstrakt

This paper is focused on estimation of the parameters of a system with non-Gaussian noise. Firstly, the Bayesian inference is described and the method of the particle filters is introduced which is directly based on the Bayesian inference. The particle filters method numrically solve a problem of a recursive Bayesian state estimator. Secondly, the method for transformation of a random variables is introduced which changes the relative likelihood of the particle filters according to the distribution of the measurement noise. Thirdly, recursive least square method is derived and linear one-step predictor is described. Fourthly, parameters of the one-step predictor are estimated online with two methods that were mention before. The outputs of both methods are compared and results are discussed. The particle filters method with random variables is analyzed.

Dokumenty

BibTex


@inproceedings{BUT115314,
  author="Aleš {Lebeda}",
  title="Estimation of parameters of one-step predictor with particle filter method",
  annote="This paper is focused on estimation of the parameters of a system with non-Gaussian noise. Firstly, the Bayesian inference is described and the method of the particle filters is introduced which is directly based on the Bayesian inference. The particle filters method numrically solve a problem of a recursive Bayesian state estimator. Secondly, the method for transformation of a random variables is introduced which changes the relative likelihood of the particle filters according to the distribution of the measurement noise. Thirdly, recursive least square method is derived and linear one-step predictor is described. Fourthly, parameters of the one-step predictor are estimated online with two methods that were mention before. The outputs of both methods are compared and results are discussed. The particle filters method with random variables is analyzed.",
  address="Silesian University of Technology, Poland",
  booktitle="13th IFAC Conference on Programmable Devices and Embedded Systems - PDeS 2015",
  chapter="115314",
  doi="10.1016/j.ifacol.2015.07.043",
  howpublished="online",
  institution="Silesian University of Technology, Poland",
  number="13",
  year="2015",
  month="may",
  pages="256--261",
  publisher="Silesian University of Technology, Poland",
  type="conference paper"
}