Markov 連鎖に依存する係数をもつ線形確率系の状態推定

書誌事項

タイトル別名
  • State Estimation of Linear Stochastic Systems with Coefficients Depending on a Markov Chain
  • Markov連鎖に依存する係数をもつ線形確率系の状態推定--観測雑音の統計量が不規則に変動する場合
  • Markov レンサ ニ イゾンスル ケイスウ オ モツ センケイ カクリツケ
  • Case of Observation Noise with Random Statistics
  • 観測雑音の統計量が不規則に変動する場合

この論文をさがす

抄録

An algorithm of minimal variance state estimation is shown for a class of continuous-time linear stochastic systems with coefficients depending on a finite state Markov chain. The class of the systems considered in this paper is more general than that of problems previously treated, in that the statistics of the observation noise can be also depend on the Markov chain. The minimal variance state estimate by using continuous-time observations is not feasible because the mathematical measurability of the noise covariance is guranteed by the differential operation which can not be realized in finite steps. For this reason, the available observations are assumed to be sampled from a continuous-time process in a short period on a finite set of time points. Except for a Bayesian type formula for the a posteriori probabilities of the Markov chain, the algorithm consists of a set of difference equations similar to stochastic differential equations in the case of continuous-time observations. A numerical example is shown to illustrate the performance of the algorithm.

収録刊行物

詳細情報 詳細情報について

問題の指摘

ページトップへ