Abstract—We consider the problem of optimal distributed beamforming in a sensor network where the sensors observe a dynamic parameter in noise and coherently amplify and forward their observations to a fusion center (FC). The FC uses a Kalman filter to track the parameter using the observations from the sensors, and we show how to find the optimal gain and phase of the sensor transmissions under both global and individual power constraints in order to minimize the mean squared error (MSE) of the parameter estimate. For the case of a global power constraint, a closed-form solution can be obtained. A numerical optimization is required for individual power constraints, but the problem can be relaxed to a semidefinite programming problem (SDP),...
We address the problem of power allocation in a wireless sensor network where distributed sensors a...
We address the problem of power allocation in a wireless sensor network where distributed sensors am...
This paper discusses dynamic state estimation for nonlinear measurement model through distributed mu...
Abstract—We consider the problem of optimal power allocation in a sensor network where the sensors o...
We consider the problem of optimal power allocation in a sensor network where the sensors observe a ...
We consider the problem of optimal power allocation in a sensor network where the sensors observe a ...
We consider a distributed sensor network in which the sin-gle antenna sensor nodes observe a determi...
The present paper is concerned with a sensor network, where each sensor is modeled by either a linea...
A central problem in analog wireless sensor networks is to design the gain or phase-shifts of the se...
In a distributed sensor (and actuator) network, several sensors may be lumped to a single transmitte...
Abstract—We consider a network of single-antenna sensors that observe an unknown deterministic param...
Optimal power allocation, in a wireless sensor network with a fusion center, for distributed paramet...
For multisensor data fusion, distributed state estimation techniques that enable a local processing ...
For multisensor data fusion, distributed state estimation techniques that enable a local processing ...
We consider the distributed detection of a zero-mean Gaussian signal in an analog wireless sensor ne...
We address the problem of power allocation in a wireless sensor network where distributed sensors a...
We address the problem of power allocation in a wireless sensor network where distributed sensors am...
This paper discusses dynamic state estimation for nonlinear measurement model through distributed mu...
Abstract—We consider the problem of optimal power allocation in a sensor network where the sensors o...
We consider the problem of optimal power allocation in a sensor network where the sensors observe a ...
We consider the problem of optimal power allocation in a sensor network where the sensors observe a ...
We consider a distributed sensor network in which the sin-gle antenna sensor nodes observe a determi...
The present paper is concerned with a sensor network, where each sensor is modeled by either a linea...
A central problem in analog wireless sensor networks is to design the gain or phase-shifts of the se...
In a distributed sensor (and actuator) network, several sensors may be lumped to a single transmitte...
Abstract—We consider a network of single-antenna sensors that observe an unknown deterministic param...
Optimal power allocation, in a wireless sensor network with a fusion center, for distributed paramet...
For multisensor data fusion, distributed state estimation techniques that enable a local processing ...
For multisensor data fusion, distributed state estimation techniques that enable a local processing ...
We consider the distributed detection of a zero-mean Gaussian signal in an analog wireless sensor ne...
We address the problem of power allocation in a wireless sensor network where distributed sensors a...
We address the problem of power allocation in a wireless sensor network where distributed sensors am...
This paper discusses dynamic state estimation for nonlinear measurement model through distributed mu...