The solution of nonlinear least-squares problems is investigated. The asymptotic behavior is studied and conditions for convergence are derived. To deal with such problems in a recursive and efficient way, it is proposed an algorithm that is based on a modified extended Kalman filter (MEKF). The error of the MEKF algorithm is proved to be exponentially bounded. Batch and iterated versions of the algorithm are given, too. As an application, the algorithm is used to optimize the parameters in certain nonlinear input\u2013output mappings. Simulation results on interpolation of real data and prediction of chaotic time series are shown
A unified and generalized framework for a recur-sive least squares (RLS)-like least mean square (LMS...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...
Abstract. In this paper we propose and analyze nonlinear least squares methods which process the dat...
Abstract—This paper proposes new approximate QR-based algorithms for recursive nonlinear least squar...
This paper proposes new approximate QR-based algorithms for recursive nonlinear least squares (NLS) ...
<p>For nonlinear random sequences filtering the extended least-square method is proposed. The receiv...
This paper presents a kernelized version of the extended recursive least squares (EX-KRLS) algorithm...
The recursive least-squares (RLS) algorithm is one of the most well-known algorithms used in adaptiv...
Abstract: In this paper, we present a new version of numerically stable fast recursive least squares...
Abstract-We present several new algorithms, and more generally a new approach, to recursive estimat...
Journal ArticleABSTRACT This paper presents a fast, recursive least-squares (RLS) adaptive nonlinea...
In this paper, we proposed a recurrent kernel recursive least square (RLS) algorithm for online lear...
Recursive estimates of large systems of equations in the context of least squares fitting is a commo...
The main feature of the least-squares adaptive algorithms is their high convergence rate. Unfortunat...
A unified and generalized framework for a recur-sive least squares (RLS)-like least mean square (LMS...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...
Abstract. In this paper we propose and analyze nonlinear least squares methods which process the dat...
Abstract—This paper proposes new approximate QR-based algorithms for recursive nonlinear least squar...
This paper proposes new approximate QR-based algorithms for recursive nonlinear least squares (NLS) ...
<p>For nonlinear random sequences filtering the extended least-square method is proposed. The receiv...
This paper presents a kernelized version of the extended recursive least squares (EX-KRLS) algorithm...
The recursive least-squares (RLS) algorithm is one of the most well-known algorithms used in adaptiv...
Abstract: In this paper, we present a new version of numerically stable fast recursive least squares...
Abstract-We present several new algorithms, and more generally a new approach, to recursive estimat...
Journal ArticleABSTRACT This paper presents a fast, recursive least-squares (RLS) adaptive nonlinea...
In this paper, we proposed a recurrent kernel recursive least square (RLS) algorithm for online lear...
Recursive estimates of large systems of equations in the context of least squares fitting is a commo...
The main feature of the least-squares adaptive algorithms is their high convergence rate. Unfortunat...
A unified and generalized framework for a recur-sive least squares (RLS)-like least mean square (LMS...
In this paper, first a brief review is given of a fully pipelined algorithm for recursive least squa...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...