Numerical aspects of least squares estimation have not been sufficiently studied in the literature. In particular, information matrix has a large condition number for systems with harmonic regressor in the initial steps of RLS (Recursive Least Squares) estimation. A large condition number indicates invertibility problems and necessitates the development of new algorithms with improved accuracy of estimation. Symmetric and positive definite information matrix is presented in a block diagonal form in this paper using transformation, which involves the Schur complement. Block diagonal sub-matrices have significantly smaller condition numbers and therefore can be easily inverted, forming a preconditioner for a large scale system. High order alg...
Abstract—We show that the generalized total least squares (GTLS) problem with a singular noise covar...
International audienceWithin the context of linear system identification, when harsh conditions migh...
We show that the generalized total least squares (GTLS) problem with a singular noise covariance mat...
Numerical aspects of least squares estimation have not been sufficiently studied in the literature. ...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
This paper describes new high order algorithms in the least-squares problem with harmonic regressor ...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
International audienceThis paper describes a new computational method for recursive least squares (R...
International audienceThis paper describes a new computational method for recursive least squares (R...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
Recently developed recursive least squares schemes, where the square root of both the covariance and...
sequential algorithms are developed for solution of the linear system problems concerned with optima...
Summarization: The continuous use of adaptive algorithms is strongly dependent on their behavior in ...
Abstract—We show that the generalized total least squares (GTLS) problem with a singular noise covar...
International audienceWithin the context of linear system identification, when harsh conditions migh...
We show that the generalized total least squares (GTLS) problem with a singular noise covariance mat...
Numerical aspects of least squares estimation have not been sufficiently studied in the literature. ...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
This paper describes new high order algorithms in the least-squares problem with harmonic regressor ...
A new robust and computationally efficient solution to least-squares problem in the presence of roun...
International audienceThis paper describes a new computational method for recursive least squares (R...
International audienceThis paper describes a new computational method for recursive least squares (R...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
Recently developed recursive least squares schemes, where the square root of both the covariance and...
sequential algorithms are developed for solution of the linear system problems concerned with optima...
Summarization: The continuous use of adaptive algorithms is strongly dependent on their behavior in ...
Abstract—We show that the generalized total least squares (GTLS) problem with a singular noise covar...
International audienceWithin the context of linear system identification, when harsh conditions migh...
We show that the generalized total least squares (GTLS) problem with a singular noise covariance mat...