This paper is concerned with the least-squares linear centralized estimation problem in multi-sensor network systems from measured outputs with uncertainties modeled by random parameter matrices. These measurements are transmitted to a central processor over different communication channels, and owing to the unreliability of the network, random one-step delays and packet dropouts are assumed to occur during the transmissions. In order to avoid network congestion, at each sampling time, each sensor’s data packet is transmitted just once, but due to the uncertainty of the transmissions, the processing center may receive either one packet, two packets, or nothing. Different white sequences of Bernoulli random variables are introduced to ...
In this paper, the information fusion estimation problem is investigated for a class of multisensor ...
The distributed fusion state estimation problem is addressed for sensor network systems with random ...
The assessment of dynamic situations using data from multiple sensors occurs in many military and ci...
This paper is concerned with the least-squares linear centralized estimation problem in multi-senso...
This paper is concerned with the least-squares linear centralized estimation problem in multi-senso...
This paper is concerned with the optimal fusion estimation problem in networked stochastic systems w...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
This paper is concerned with the optimal fusion estimation problem in networked stochastic systems w...
The study focuses on the modelling and estimation of a class of discrete-time uncertain systems, inc...
This paper is concerned with the optimal fusion estimation problem in networked stochastic systems w...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
Due to its great importance in several applied and theoretical fields, the signal estimation proble...
The assessment of dynamic situations using data from multiple sensors occurs in many military and ci...
In this paper, the information fusion estimation problem is investigated for a class of multisensor ...
The distributed fusion state estimation problem is addressed for sensor network systems with random ...
The assessment of dynamic situations using data from multiple sensors occurs in many military and ci...
This paper is concerned with the least-squares linear centralized estimation problem in multi-senso...
This paper is concerned with the least-squares linear centralized estimation problem in multi-senso...
This paper is concerned with the optimal fusion estimation problem in networked stochastic systems w...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
This paper is concerned with the optimal fusion estimation problem in networked stochastic systems w...
The study focuses on the modelling and estimation of a class of discrete-time uncertain systems, inc...
This paper is concerned with the optimal fusion estimation problem in networked stochastic systems w...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
Due to its great importance in several applied and theoretical fields, the signal estimation proble...
The assessment of dynamic situations using data from multiple sensors occurs in many military and ci...
In this paper, the information fusion estimation problem is investigated for a class of multisensor ...
The distributed fusion state estimation problem is addressed for sensor network systems with random ...
The assessment of dynamic situations using data from multiple sensors occurs in many military and ci...