Moving horizon estimation (MHE) solves a constrained dynamic optimisation problem. Including nonlinear dynamics into an optimal estimation problem generally comes at the cost of tackling a non-convex optimisation problem. Here, a particular model formulation is proposed in order to convexify a class of nonlinear MHE problems. It delivers a linear time-varying (LTV) model that is globally equivalent to the nonlinear dynamics in a noise-free environment, hence the optimisation problem becomes convex. On the other hand, in the presence of unknown disturbances, the accuracy of the LTV model degrades and this results in a less accurate solution. For this purpose, some assumptions are imposed and a homotopy-based approach is proposed in order to ...
Moving-horizon state estimation is addressed for a class of uncertain discrete-time linear systems w...
In this paper, a constrained moving horizon estimation (MHE) strategy for linear systems is proposed...
We propose a state smoothing algorithm for hybrid systems based on Moving Horizon Estimation (MHE) b...
Moving horizon estimation (MHE) solves a constrained dynamic optimisation problem. Including nonline...
Moving horizon estimation (MHE) is a con- strained non-convex optimization problem in principle, whi...
Abstract — In the past decade, moving horizon estimation (MHE) has emerged as a powerful technique f...
Abstract — In the last decade, moving horizon estimation (MHE) has emerged as a powerful technique f...
This paper presents a novel approach to design estimators for nonlinear systems. The approach is bas...
In this paper we present a moving horizon estimation (MHE) formulation suitable to easily describe t...
This paper presents a novel approach to design estimators for nonlinear systems. The approach is bas...
Abstract: Moving Horizon Estimation (MHE) is an efficient optimization-based strategy for state esti...
Moving Horizon Estimation (MHE) is an efficient optimization-based strategy for state estima-tion. D...
By now many results with respect to the fast and efficient implementation of model predictive contro...
We analyze the stability properties of an approximate algorithm for moving horizon estimation (MHE)....
This note proposes a new form of nonlinear state estimator, for which we can establish robust global...
Moving-horizon state estimation is addressed for a class of uncertain discrete-time linear systems w...
In this paper, a constrained moving horizon estimation (MHE) strategy for linear systems is proposed...
We propose a state smoothing algorithm for hybrid systems based on Moving Horizon Estimation (MHE) b...
Moving horizon estimation (MHE) solves a constrained dynamic optimisation problem. Including nonline...
Moving horizon estimation (MHE) is a con- strained non-convex optimization problem in principle, whi...
Abstract — In the past decade, moving horizon estimation (MHE) has emerged as a powerful technique f...
Abstract — In the last decade, moving horizon estimation (MHE) has emerged as a powerful technique f...
This paper presents a novel approach to design estimators for nonlinear systems. The approach is bas...
In this paper we present a moving horizon estimation (MHE) formulation suitable to easily describe t...
This paper presents a novel approach to design estimators for nonlinear systems. The approach is bas...
Abstract: Moving Horizon Estimation (MHE) is an efficient optimization-based strategy for state esti...
Moving Horizon Estimation (MHE) is an efficient optimization-based strategy for state estima-tion. D...
By now many results with respect to the fast and efficient implementation of model predictive contro...
We analyze the stability properties of an approximate algorithm for moving horizon estimation (MHE)....
This note proposes a new form of nonlinear state estimator, for which we can establish robust global...
Moving-horizon state estimation is addressed for a class of uncertain discrete-time linear systems w...
In this paper, a constrained moving horizon estimation (MHE) strategy for linear systems is proposed...
We propose a state smoothing algorithm for hybrid systems based on Moving Horizon Estimation (MHE) b...