A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estimator consists of a filtering step – which uses a weighted combination of sensors information – and a model-based predictor of the system’s state. The filtering weights and the model-based prediction parameters jointly minimize both the bias and the variance of the prediction error in a Pareto framework at each time-step. The simultaneous distributed design of the filtering weights and of the model-based prediction parameters is considered, differently from what is normally done in the literature. It is assumed that the weights of the filtering step are in general unequal for the different state components, unlike existing consensus- based app...
We propose a state estimation methodology using a network of distributed observers. We consider a sc...
This dissertation is aimed at developing optimal and distributed state estimation algorithms for a t...
The research in distributed algorithms is linked with the developments of statistical inference in ...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
In this paper, a novel distributed model-based prediction method is proposed using sensor networks. ...
In this paper, a novel distributed model-based prediction method is proposed using sensor networks. ...
In this paper a novel partition-based state prediction method is proposed for interconnected stochas...
In this paper, a distributed method for fault detection using sensor networks is proposed. Each sens...
In this paper a novel partition-based state prediction method is proposed for interconnected stochas...
In this paper, we have considered distributed bounded-error state estimation applied to the problem ...
A sensor network is a distributed system, consisting of plenty of embedded sensors that can be depl...
This paper presents distributed bounded-error parameter and state estimation algorithms suited to me...
This paper describes the distributed information filtering where a set of sensor networks are requir...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
We propose a state estimation methodology using a network of distributed observers. We consider a sc...
This dissertation is aimed at developing optimal and distributed state estimation algorithms for a t...
The research in distributed algorithms is linked with the developments of statistical inference in ...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
In this paper, a novel distributed model-based prediction method is proposed using sensor networks. ...
In this paper, a novel distributed model-based prediction method is proposed using sensor networks. ...
In this paper a novel partition-based state prediction method is proposed for interconnected stochas...
In this paper, a distributed method for fault detection using sensor networks is proposed. Each sens...
In this paper a novel partition-based state prediction method is proposed for interconnected stochas...
In this paper, we have considered distributed bounded-error state estimation applied to the problem ...
A sensor network is a distributed system, consisting of plenty of embedded sensors that can be depl...
This paper presents distributed bounded-error parameter and state estimation algorithms suited to me...
This paper describes the distributed information filtering where a set of sensor networks are requir...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
We propose a state estimation methodology using a network of distributed observers. We consider a sc...
This dissertation is aimed at developing optimal and distributed state estimation algorithms for a t...
The research in distributed algorithms is linked with the developments of statistical inference in ...