Linear recursive discrete-time estimators using covariance information under uncertain observations
نویسندگان
چکیده
This paper, using the covariance information, proposes recursive least-squares (RLS) 4ltering and 4xed-point smoothing algorithms with uncertain observations in linear discrete-time stochastic systems. The observation equation is given by y(k) = (k)Hx(k) + v(k), where { (k)} is a binary switching sequence with conditional probability distribution verifying Eq. (3). This observation equation is suitable for modeling the transmission of data in multichannels as in remote sensing situations. The estimators require the information of the system matrix concerning the state variable which generates the signal, the observation vector H , the crossvariance function Kxz(k; k) of the state variable with the signal, the variance R(k) of the white observation noise, the observed values, the probability p(k)=P{ (k)=1} that the signal exists in the uncertain observation equation and the (2; 2) element [P(k|j)]2;2 of the conditional probability matrix of (k), given (j). ? 2003 Elsevier Science B.V. All rights reserved.
منابع مشابه
New design of estimators using covariance information with uncertain observations in linear discrete-time systems
This paper proposes recursive least-squares (RLS) filtering and fixed-point smoothing algorithms with uncertain observations in linear discrete-time stochastic systems. The estimators require the information of the auto-covariance function in the semi-degenerate kernel form, the variance of white observation noise, the observed value and the probability that the signal exists in the observed va...
متن کاملLinear estimation from uncertain observations with white plus coloured noises using covariance information
This paper considers the least mean-squared error linear estimation problems, using covariance information, in linear discrete-time stochastic systems with uncertain observations for the case of white plus coloured observation noises. The different kinds of estimation problems treated include one-stage prediction, filtering, and fixed-point smoothing. The recursive algorithms are derived by emp...
متن کاملDesign of a fixed-interval smoother using covariance information based on the innovations approach in linear discrete-time stochastic systems
This paper describes a design for a recursive least-squares Wiener fixed-interval smoother using the covariance information in linear discrete-time stochastic systems. The estimators require information from the observation matrix, the system matrix for the state variable, related to the signal, the variance of the state variable, the cross-variance function of the state variable with the obser...
متن کاملSecond-order polynomial estimators from uncertain observations using covariance information
This paper presents recursive least mean-squared error second-order polynomial filtering and fixed-point smoothing algorithms to estimate a signal, from uncertain observations, when only the information on the moments up to fourth-order of the signal and observation noise is available. The estimators require the autocovariance and crosscovariance functions of the signal and their second-order p...
متن کاملRLS Wiener Predictor with Uncertain Observations in Linear Discrete-Time Stochastic Systems
This paper proposes recursive least-squares (RLS) l-step ahead predictor and filtering algorithms with uncertain observations in linear discrete-time stochastic systems. The observation equation is given by y k k z k v k , , where is a binary switching sequence with conditional probability. The estimators require the information of the system state-transition matrix ...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Signal Processing
دوره 83 شماره
صفحات -
تاریخ انتشار 2003