We propose a partition-based state estimator for linear discrete-time systems composed by coupled subsystems affected by bounded disturbances. The architecture is distributed in the sense that each subsystem is equipped with a local state estimator that exploits suitable pieces of information from parent subsystems. Moreover, differently from methods based on moving horizon estimation, our approach does not require the on-line solution to optimization problems. Our state-estimation scheme, that is based on the notion of practical robust positive invariance developed in (Rakovic et al., 2011), also guarantees satisfaction of constraints on local estimation errors and it can be updated with a limited computational effort when subsystems are a...
A distributed set-membership approach is proposed for the state estimation of large-scale systems. T...
In this study, we present methods of optimization-based power system state estimation over sensor ne...
In this paper, we propose a novel distributed fault detection method to monitor the state of a linea...
We propose a state estimator for linear discrete-time systems composed by coupled subsystems affecte...
In this paper we propose a novel partition-based state estimator for linear discrete-time systems co...
This paper proposes a state estimator for large-scale linear systems described by the interaction of...
This thesis proposes a set of novel partition-based moving-horizon state estimation schemes for syst...
In this paper, we propose a novel partition-based distributed state estimation scheme for non-overla...
This paper presents three novel Moving Horizon Estimation (MHE) methods for discrete-time partitione...
In this work we consider a set of dynamically independent subsystems with homogeneous models, interc...
In the last years, the distributed state estimation issue has gained great importance in the framewo...
This paper presents three novel moving-horizon estimation (MHE) methods for discrete-time partitione...
Abstract: The topic of this paper is distributed state estimation for time-invariant systems with fi...
In this thesis, the topics of state estimation for large-scale systems (LSSs) with distributed obser...
In this paper, we propose a novel distributed fault detection method to monitor the state of a linea...
A distributed set-membership approach is proposed for the state estimation of large-scale systems. T...
In this study, we present methods of optimization-based power system state estimation over sensor ne...
In this paper, we propose a novel distributed fault detection method to monitor the state of a linea...
We propose a state estimator for linear discrete-time systems composed by coupled subsystems affecte...
In this paper we propose a novel partition-based state estimator for linear discrete-time systems co...
This paper proposes a state estimator for large-scale linear systems described by the interaction of...
This thesis proposes a set of novel partition-based moving-horizon state estimation schemes for syst...
In this paper, we propose a novel partition-based distributed state estimation scheme for non-overla...
This paper presents three novel Moving Horizon Estimation (MHE) methods for discrete-time partitione...
In this work we consider a set of dynamically independent subsystems with homogeneous models, interc...
In the last years, the distributed state estimation issue has gained great importance in the framewo...
This paper presents three novel moving-horizon estimation (MHE) methods for discrete-time partitione...
Abstract: The topic of this paper is distributed state estimation for time-invariant systems with fi...
In this thesis, the topics of state estimation for large-scale systems (LSSs) with distributed obser...
In this paper, we propose a novel distributed fault detection method to monitor the state of a linea...
A distributed set-membership approach is proposed for the state estimation of large-scale systems. T...
In this study, we present methods of optimization-based power system state estimation over sensor ne...
In this paper, we propose a novel distributed fault detection method to monitor the state of a linea...