A well-evaluated state covariance matrix avoids error propagation due to divergence issues and, thereby, it is crucial for a successful state estimator design. In this paper we investigate the performance of the state covariance matrices used in three unconstrained Extended Kalman Filter (EKF) formulations and one constrained EKF formulation (CEKF). As benchmark case studies we have chosen: a) a batch chemical reactor with reversible reactions whose system model and measurement are such that multiple states satisfy the equilibrium condition and b) a CSTR with exothermic irreversible reactions and cooling jacket energy balance whose nonlinear behavior includes multiple steady-states and limit cycles. The results have shown that CEKF is in ge...
An on-line optimising control strategy involving a two level extended Kalman filter (EKF) for dynami...
In this paper a general framework is developed for state estimation in a class of nonlinear continuo...
The filters tuning is a crucial issue due the need to quantify the accuracy of the model in terms of...
A well-evaluated state covariance matrix avoids error propagation due to divergence issues and, ther...
AbstractContinuous Stirred Tank Reactor is a typical chemical reactor system with complex nonlinear ...
Recursive state estimation of constrained nonlinear dynamical system has attracted the attention of ...
The control implementation loops for the chemical process require measurements and variable estimati...
The paper is aimed at comparing some of the most promising and novel advanced techniques for estimat...
Recursive estimation of constrained nonlinear dynamical systems has attracted the attention of many ...
The performance of Bayesian state estimators, such as the extended Kalman filter (EKE), is dependent...
State and parameter estimation are cornerstone problems in Chemical Process Control. When the proble...
The Kalman filter has been widely used for estimation and tracking of linear systems since its formu...
Recursive estimation of states of constrained nonlinear dynamic systems has attracted the attention ...
State estimation is a process of estimating the unmeasured or noisy states using the measured output...
Neste trabalho são apresentadas estratégias para a estimação, em processos químicos, de estados, par...
An on-line optimising control strategy involving a two level extended Kalman filter (EKF) for dynami...
In this paper a general framework is developed for state estimation in a class of nonlinear continuo...
The filters tuning is a crucial issue due the need to quantify the accuracy of the model in terms of...
A well-evaluated state covariance matrix avoids error propagation due to divergence issues and, ther...
AbstractContinuous Stirred Tank Reactor is a typical chemical reactor system with complex nonlinear ...
Recursive state estimation of constrained nonlinear dynamical system has attracted the attention of ...
The control implementation loops for the chemical process require measurements and variable estimati...
The paper is aimed at comparing some of the most promising and novel advanced techniques for estimat...
Recursive estimation of constrained nonlinear dynamical systems has attracted the attention of many ...
The performance of Bayesian state estimators, such as the extended Kalman filter (EKE), is dependent...
State and parameter estimation are cornerstone problems in Chemical Process Control. When the proble...
The Kalman filter has been widely used for estimation and tracking of linear systems since its formu...
Recursive estimation of states of constrained nonlinear dynamic systems has attracted the attention ...
State estimation is a process of estimating the unmeasured or noisy states using the measured output...
Neste trabalho são apresentadas estratégias para a estimação, em processos químicos, de estados, par...
An on-line optimising control strategy involving a two level extended Kalman filter (EKF) for dynami...
In this paper a general framework is developed for state estimation in a class of nonlinear continuo...
The filters tuning is a crucial issue due the need to quantify the accuracy of the model in terms of...