This paper is concerned with the distributed field estimation problem using a sensor network, and the main purpose is to design a local filter for each sensor node to estimate a spatially-distributed physical process using the measurements of the whole network. The finite element method is employed to discretize the infinite dimensional process, which is described by a partial differential equation, and an approximate finite dimensional linear system is established. Due to the sparsity on the spatial distribution of the source function, the ℓ 1 -regularized H ∞ filtering is introduced to solve the estimation problem, which attempts to provide better performance than the classical centralized Kalman filtering. Finally, a...
In this paper we consider a network of spatially distributed sensors which collect measurement sampl...
International audienceThis paper focuses on distributed state estimation for sensor network observin...
This paper describes the distributed information filtering where a set of sensor networks are requir...
This paper deals with the distributed implementation of a recently proposed algorithm for the estima...
<p>We study distributed estimation of dynamic random fields observed by a sparsely connected network...
In this paper,we propose a distributed Kalman Filter based algorithm,known in literature as Consensu...
In this contribution, we implement a fully distributed diffusion field estimation algorithm based on...
This work takes into account the problem of distributed estimation of a physical field of interest t...
In this paper, we propose a strategy for distributed Kalman filtering over sensor networks, based on...
In this paper, we propose a strategy for distributed Kalman filtering over sensor networks, based on...
This paper is concerned with a new distributed H∞-consensus filtering problem over a finite-horizon ...
This paper investigates the distributed filtering for discrete-time-invariant systems in sensor netw...
This study addresses the distributed average set-membership filtering of spatially varying processes...
Abstract—In this paper, we propose a novel framework for field estimation in a wireless sensor netwo...
This paper deals with the distributed estimation problem in a relative sensing network. Each node is...
In this paper we consider a network of spatially distributed sensors which collect measurement sampl...
International audienceThis paper focuses on distributed state estimation for sensor network observin...
This paper describes the distributed information filtering where a set of sensor networks are requir...
This paper deals with the distributed implementation of a recently proposed algorithm for the estima...
<p>We study distributed estimation of dynamic random fields observed by a sparsely connected network...
In this paper,we propose a distributed Kalman Filter based algorithm,known in literature as Consensu...
In this contribution, we implement a fully distributed diffusion field estimation algorithm based on...
This work takes into account the problem of distributed estimation of a physical field of interest t...
In this paper, we propose a strategy for distributed Kalman filtering over sensor networks, based on...
In this paper, we propose a strategy for distributed Kalman filtering over sensor networks, based on...
This paper is concerned with a new distributed H∞-consensus filtering problem over a finite-horizon ...
This paper investigates the distributed filtering for discrete-time-invariant systems in sensor netw...
This study addresses the distributed average set-membership filtering of spatially varying processes...
Abstract—In this paper, we propose a novel framework for field estimation in a wireless sensor netwo...
This paper deals with the distributed estimation problem in a relative sensing network. Each node is...
In this paper we consider a network of spatially distributed sensors which collect measurement sampl...
International audienceThis paper focuses on distributed state estimation for sensor network observin...
This paper describes the distributed information filtering where a set of sensor networks are requir...