Centralized state-estimation algorithms, such as the original Kalman filter, are no longer feasible in large scale sensor networks, due to practical limitations on communication bandwidth and spatial distribution of resources. To cope with these limitations, various distributed estimation algorithms have been proposed that estimate the state of a process in each sensor node using local measurements. State fusion of this local estimate with the estimates obtained in neighboring nodes ensures that the difference between local estimates is reduced. A common perspective in distributed state-estimation is that each individual node performs the same algorithm locally. This paper investigates whether it is beneficial to have some nodes that can pe...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
In this paper, we propose a strategy for distributed Kalman filtering over sensor networks, based on...
In this paper, we focus on a new distributed input and state estimation architecture, where nodes of...
Centralized state-estimation algorithms, such as the original Kalman filter, are no longer feasible ...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
This dissertation is aimed at developing optimal and distributed state estimation algorithms for a t...
Distributed solutions for signal processing techniques are important for establishing large-scale mo...
An important research area in sensor networks is the design and analysis of distributed estimation a...
This paper presents distributed bounded-error parameter and state estimation algorithms suited to me...
The usage of wireless sensor networks (WSNs) for state-estimation has recently gained increasing att...
In this paper, we have considered distributed bounded-error state estimation applied to the problem ...
In this paper, we propose a strategy for distributed Kalman filtering over sensor networks, based on...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
The research in distributed algorithms is linked with the developments of statistical inference in ...
A new distributed input and state estimation architecture is introduced and analyzed for heterogeneo...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
In this paper, we propose a strategy for distributed Kalman filtering over sensor networks, based on...
In this paper, we focus on a new distributed input and state estimation architecture, where nodes of...
Centralized state-estimation algorithms, such as the original Kalman filter, are no longer feasible ...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
This dissertation is aimed at developing optimal and distributed state estimation algorithms for a t...
Distributed solutions for signal processing techniques are important for establishing large-scale mo...
An important research area in sensor networks is the design and analysis of distributed estimation a...
This paper presents distributed bounded-error parameter and state estimation algorithms suited to me...
The usage of wireless sensor networks (WSNs) for state-estimation has recently gained increasing att...
In this paper, we have considered distributed bounded-error state estimation applied to the problem ...
In this paper, we propose a strategy for distributed Kalman filtering over sensor networks, based on...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
The research in distributed algorithms is linked with the developments of statistical inference in ...
A new distributed input and state estimation architecture is introduced and analyzed for heterogeneo...
A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estim...
In this paper, we propose a strategy for distributed Kalman filtering over sensor networks, based on...
In this paper, we focus on a new distributed input and state estimation architecture, where nodes of...