In this study, distributed security estimation problems for networked stochastic uncertain systems subject to stochastic deception attacks are investigated. In sensor networks, the measurement data of sensor nodes may be attacked maliciously in the process of data exchange between sensors. When the attack rates and noise variances for the stochastic deception attack signals are known, many measurement data received from neighbour nodes are compressed by a weighted measurement fusion algorithm based on the least-squares method at each sensor node. A distributed optimal filter in the linear minimum variance criterion is presented based on compressed measurement data. It has the same estimation accuracy as and lower computational cost than tha...
The distributed fusion state estimation problem is addressed for sensor network systems with random ...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
The Internet of Things brings about many applications where networks of devices collectively gather ...
This paper focuses on the distributed fusion estimation problem in which a signal transmitted over w...
This paper is concerned with the distributed recursive filtering problem for a class of discrete tim...
This paper examines the distributed filtering and fixed-point smoothing problems for networked syste...
Herein, design of false data injection attack on a distributed cyber-physical system is considered. ...
Distributed estimation of a deterministic mean-shift parameter in additive zero-mean noise is studie...
This paper is concerned with the distributed estimation problem in sensor networks subjected to unkn...
This article has been accepted for publication in a future issue of this journal, but has not been f...
Distributed estimation using quantized data in the presence of Byzantine attacks is considered. Seve...
In this paper, a cluster-based approach is used to address the distributed fusion estimation proble...
Distributed estimation of a deterministic scalar parameter by using quantized data in the presence o...
Herein, design of false data injection attack on a distributed cyber-physical system is considered. ...
We consider distributed Kalman filtering for dynamic state estimation over wireless sensor networks....
The distributed fusion state estimation problem is addressed for sensor network systems with random ...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
The Internet of Things brings about many applications where networks of devices collectively gather ...
This paper focuses on the distributed fusion estimation problem in which a signal transmitted over w...
This paper is concerned with the distributed recursive filtering problem for a class of discrete tim...
This paper examines the distributed filtering and fixed-point smoothing problems for networked syste...
Herein, design of false data injection attack on a distributed cyber-physical system is considered. ...
Distributed estimation of a deterministic mean-shift parameter in additive zero-mean noise is studie...
This paper is concerned with the distributed estimation problem in sensor networks subjected to unkn...
This article has been accepted for publication in a future issue of this journal, but has not been f...
Distributed estimation using quantized data in the presence of Byzantine attacks is considered. Seve...
In this paper, a cluster-based approach is used to address the distributed fusion estimation proble...
Distributed estimation of a deterministic scalar parameter by using quantized data in the presence o...
Herein, design of false data injection attack on a distributed cyber-physical system is considered. ...
We consider distributed Kalman filtering for dynamic state estimation over wireless sensor networks....
The distributed fusion state estimation problem is addressed for sensor network systems with random ...
This paper is concerned with the distributed and centralized fusion filtering problems in sensor net...
The Internet of Things brings about many applications where networks of devices collectively gather ...