This paper presents a novel approach to design estimators for nonlinear systems. The approach is based on a combination of linear Moving Horizon Estimation (MHE) and Direct Virtual Sensor (DVS) techniques, and allows the design of estimators with guaranteed stability, which can account for convex constraints on the variables to be estimated. It is also shown that the designed estimators are optimal, in the sense that they give minimal worst-case estimation error, on the basis of the available finite number of noise-corrupted data, with respect to an ideal MHE filter (obtained by assuming exact knowledge of the system dynamics and of the global solution of the related nonlinear program). The approach is tested on a nonlinear mass–spring–damp...
Consider a linear system with input u and outputs y and z. Assume that u(t) and y(t) are measured fo...
Moving horizon estimation (MHE) solves a constrained dynamic optimisation problem. Including nonline...
Moving Horizon Estimation (MHE) is an efficient optimization-based strategy for state estima-tion. D...
This paper presents a novel approach to design estimators for nonlinear systems. The approach is bas...
Abstract — In the last decade, moving horizon estimation (MHE) has emerged as a powerful technique f...
Abstract — In the past decade, moving horizon estimation (MHE) has emerged as a powerful technique f...
Moving horizon estimation (MHE) is a con- strained non-convex optimization problem in principle, whi...
In this paper we consider a nonlinear constrained system observed by a sensor network and propose a ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
In this paper, a constrained moving horizon estimation (MHE) strategy for linear systems is proposed...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon...
AbstractThis paper presents a novel distributed estimation algorithm based on the concept of moving ...
A moving-horizon state estimation problem is addressed for a class of nonlinear discrete-time system...
In this paper, a piecewise-affine direct virtual sensor is proposed for the estimation of unmeasured...
This paper addresses the problem of estimating the state for a class of uncertain discrete-time line...
Consider a linear system with input u and outputs y and z. Assume that u(t) and y(t) are measured fo...
Moving horizon estimation (MHE) solves a constrained dynamic optimisation problem. Including nonline...
Moving Horizon Estimation (MHE) is an efficient optimization-based strategy for state estima-tion. D...
This paper presents a novel approach to design estimators for nonlinear systems. The approach is bas...
Abstract — In the last decade, moving horizon estimation (MHE) has emerged as a powerful technique f...
Abstract — In the past decade, moving horizon estimation (MHE) has emerged as a powerful technique f...
Moving horizon estimation (MHE) is a con- strained non-convex optimization problem in principle, whi...
In this paper we consider a nonlinear constrained system observed by a sensor network and propose a ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
In this paper, a constrained moving horizon estimation (MHE) strategy for linear systems is proposed...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon...
AbstractThis paper presents a novel distributed estimation algorithm based on the concept of moving ...
A moving-horizon state estimation problem is addressed for a class of nonlinear discrete-time system...
In this paper, a piecewise-affine direct virtual sensor is proposed for the estimation of unmeasured...
This paper addresses the problem of estimating the state for a class of uncertain discrete-time line...
Consider a linear system with input u and outputs y and z. Assume that u(t) and y(t) are measured fo...
Moving horizon estimation (MHE) solves a constrained dynamic optimisation problem. Including nonline...
Moving Horizon Estimation (MHE) is an efficient optimization-based strategy for state estima-tion. D...