In this paper we consider the problem of distributed, joint, state estimation and identification for a class of stochastic systems with unknown inputs (UI). A distributed Expectation-Maximization (EM) algorithm is presented to estimate the local state at each sensor node by using the local observations in the E-step, and three different consensus schemes are proposed to diffuse the local state estimate to each sensor's neighbours and to derive the global state estimate at each node. In the M-step, each sensor identifies the local unknown inputs by using the global state estimate. A numerical example of target tracking in distributed sensor network is given to verify the three different distributed EM algorithms compared with the centralized...
In this work we consider the problem of simultaneously classifying sensor types and estimating hidde...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
In this paper, we consider the problem of simultaneously classifying sensor types and estimating hid...
In this paper we consider the problem of distributed, joint, state estimation and identification for...
International audienceThis paper proposes a distributed method for jointly estimating the input and ...
In this study, the authors consider the distributed state estimation problem of a stochastic linear ...
The assessment of dynamic situations using data from multiple sensors occurs in many military and ci...
International audienceThis paper provides a solution for distributed input and state estimation, sim...
This paper addresses the problem of the joint estimation of system state and generalized sensor bias...
Networked systems comprised of multiple nodes with sensing, processing, and communication capabiliti...
The paper considers the problem of distributed estimation of an unknown deterministic scalar paramet...
Estimating the unknown parameters of a statistical model based on the observations collected by a se...
An important research area in sensor networks is the design and analysis of distributed estimation a...
State estimation for a class of linear time-invariant systems with distributed output measurements (...
International audienceThis paper focuses on distributed state estimation for sensor network observin...
In this work we consider the problem of simultaneously classifying sensor types and estimating hidde...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
In this paper, we consider the problem of simultaneously classifying sensor types and estimating hid...
In this paper we consider the problem of distributed, joint, state estimation and identification for...
International audienceThis paper proposes a distributed method for jointly estimating the input and ...
In this study, the authors consider the distributed state estimation problem of a stochastic linear ...
The assessment of dynamic situations using data from multiple sensors occurs in many military and ci...
International audienceThis paper provides a solution for distributed input and state estimation, sim...
This paper addresses the problem of the joint estimation of system state and generalized sensor bias...
Networked systems comprised of multiple nodes with sensing, processing, and communication capabiliti...
The paper considers the problem of distributed estimation of an unknown deterministic scalar paramet...
Estimating the unknown parameters of a statistical model based on the observations collected by a se...
An important research area in sensor networks is the design and analysis of distributed estimation a...
State estimation for a class of linear time-invariant systems with distributed output measurements (...
International audienceThis paper focuses on distributed state estimation for sensor network observin...
In this work we consider the problem of simultaneously classifying sensor types and estimating hidde...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
In this paper, we consider the problem of simultaneously classifying sensor types and estimating hid...