Abstract In this work, we present low-complexity variable forgetting factor (VFF) techniques for diffusion recursive least squares (DRLS) algorithms. Particularly, we propose low-complexity VFF-DRLS algorithms for distributed parameter and spectrum estimation in sensor networks. For the proposed algorithms, they can adjust the forgetting factor automatically according to the posteriori error signal. We develop detailed analyses in terms of mean and mean square performance for the proposed algorithms and derive mathematical expressions for the mean square deviation (MSD) and the excess mean square error (EMSE). The simulation results show that the proposed low-complexity VFF-DRLS algorithms achieve superior performance to the existing DRLS a...
DoctorIn this thesis, we develop novel algorithms which deal with a distributed estimation problem. ...
We study the problem of distributed least-squares estimation over ad hoc adaptive networks, where th...
In this paper, we deal with deterministic dominance of stochastic equations. The obtained results le...
Distributed recursive least squares (RLS) algorithms have superior convergence properties compared t...
This paper is concerned with studying the forgetting factor of the recursive least square (RLS). A n...
In a distributed parameter estimation problem, during each sampling instant, a typical sensor node c...
Signal estimation is important for protection, systemstudy and control purposes. This paper deals wi...
Abstract—The performance of the recursive least-squares (RLS) algorithm is governed by the forgettin...
In this paper we consider the issue of distributed adaptive estimation over sensor networks. To deal...
Signal estimation is important for protection, system study, and control purposes. This paper deals ...
Abstract—Recursive least-squares (RLS) schemes are of paramount importance for online estimation and...
Abstract—The recursive least-squares (RLS) algorithm has well-documented merits for reducing complex...
This paper proposes a randomized incremental algorithm to distributedly compute the least square (LS...
We propose a modified diffusion strategy for parameter estimation in sensor networks where nodes exc...
In this paper, the problem of distributed estimation over adaptive networks is studied. A new diffus...
DoctorIn this thesis, we develop novel algorithms which deal with a distributed estimation problem. ...
We study the problem of distributed least-squares estimation over ad hoc adaptive networks, where th...
In this paper, we deal with deterministic dominance of stochastic equations. The obtained results le...
Distributed recursive least squares (RLS) algorithms have superior convergence properties compared t...
This paper is concerned with studying the forgetting factor of the recursive least square (RLS). A n...
In a distributed parameter estimation problem, during each sampling instant, a typical sensor node c...
Signal estimation is important for protection, systemstudy and control purposes. This paper deals wi...
Abstract—The performance of the recursive least-squares (RLS) algorithm is governed by the forgettin...
In this paper we consider the issue of distributed adaptive estimation over sensor networks. To deal...
Signal estimation is important for protection, system study, and control purposes. This paper deals ...
Abstract—Recursive least-squares (RLS) schemes are of paramount importance for online estimation and...
Abstract—The recursive least-squares (RLS) algorithm has well-documented merits for reducing complex...
This paper proposes a randomized incremental algorithm to distributedly compute the least square (LS...
We propose a modified diffusion strategy for parameter estimation in sensor networks where nodes exc...
In this paper, the problem of distributed estimation over adaptive networks is studied. A new diffus...
DoctorIn this thesis, we develop novel algorithms which deal with a distributed estimation problem. ...
We study the problem of distributed least-squares estimation over ad hoc adaptive networks, where th...
In this paper, we deal with deterministic dominance of stochastic equations. The obtained results le...