New nonlinear filtering algorithms are designed based on a receding horizon strategy, i.e., a finite impulse response (FIR) structure, and square root information filtering to achieve high accuracy and good performance in empirical error covariance tests. The new nonlinear receding horizon filters reduce approximation errors in nonlinear filtering by considering a set of recent observations with non-informative initial conditions. By applying information filtering, we are able to manage the non-informative initial conditions, and thus propose the square root version of the algorithm as a means of retaining the positive definiteness of the error covariance. Based on the proposed strategy, we then implement known nonlinear filtering framework...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
Journal ArticleWhile linear filter are useful in a large number of applications and relatively simpl...
A receding horizon Kalman finite-impulse response (FIR) filter is suggested for continuous-time syst...
New nonlinear filtering algorithms are designed based on a receding horizon strategy, i.e., a finite...
Optimal filters for nonlinear systems are in general difficult to derive/implement. The common appro...
Optimal filters for nonlinear systems are in general difficult to derive/implement. The common appro...
Optimal filters for nonlinear systems are in general difficult to derive/implement. The common appro...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
Optimal filters for nonlinear systems are in general difficult to derive/implement. The common appro...
Optimal filters for nonlinear systems are in general difficult to derive/implement. The common appro...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
Journal ArticleWhile linear filter are useful in a large number of applications and relatively simpl...
A receding horizon Kalman finite-impulse response (FIR) filter is suggested for continuous-time syst...
New nonlinear filtering algorithms are designed based on a receding horizon strategy, i.e., a finite...
Optimal filters for nonlinear systems are in general difficult to derive/implement. The common appro...
Optimal filters for nonlinear systems are in general difficult to derive/implement. The common appro...
Optimal filters for nonlinear systems are in general difficult to derive/implement. The common appro...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
Optimal filters for nonlinear systems are in general difficult to derive/implement. The common appro...
Optimal filters for nonlinear systems are in general difficult to derive/implement. The common appro...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
Optimal filters for nonlinear systems are in general difficult to derive or implement. The common ap...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
Journal ArticleWhile linear filter are useful in a large number of applications and relatively simpl...
A receding horizon Kalman finite-impulse response (FIR) filter is suggested for continuous-time syst...