We present analytical results, and details of implementation for a novel adaptive filter incorporating an approximate natural gradient tap-update algorithm, termed the simplified signed sparse LMS algorithm (SSSLMS). Each tap-update equation includes a term proportional to the tap-value, so that larger taps adapt more quickly than for a corresponding Least Mean Square (LMS) update. Results indicate that the algorithm is suited for use in sparse channels. The bounds on its maximum allowable stepsize differ from LMS, and simulations are provided that indicate potentially more robust convergence for larger step-sizes than LMS. A theoretical expression for the excess mean square error (MSE) is also derived, and confirmed by numerical simulation...
Adaptive filters that self-adjust their transfer functions according to optimizing algorithms are po...
Abstract—This paper presents a precise analysis of the crit-ical path of the least-mean-square (LMS)...
5siThe paper deals with the identification of nonlinear systems with adaptive filters. In particular...
This paper provides a novel normalized sign least-mean square (NSLMS) algorithm which updates only a...
In this paper we discuss a proportional weight algo-rithm that is similar to LMS. The distinction is...
The LMS adaptive algorithm has always been attractive to researchers in the field of adaptive signal...
The Normalized Least Mean Square (NLMS) algorithm is an important variant of the classical LMS algor...
Abstract Least mean square (LMS) based adaptive algorithms have been attracted much attention since ...
Shows that the NLMS (normalized least-mean-square) algorithm is a potentially faster converging algo...
The paper deals with the identification of nonlinear systems with adaptive filters. In particular, a...
The paper deals with the identification of nonlinear systems with adaptive filters. In particular, a...
Adaptive filters that self-adjust their transfer functions according to optimizing algorithms are po...
Partial updating of LMS filter coefficients is an effective method for reducing the computational lo...
This paper presents a novel adaptive algorithm based on RZA-LMS for sparse signal and system identif...
The paper deals with the identification of nonlinear systems with adaptive filters. In particular, a...
Adaptive filters that self-adjust their transfer functions according to optimizing algorithms are po...
Abstract—This paper presents a precise analysis of the crit-ical path of the least-mean-square (LMS)...
5siThe paper deals with the identification of nonlinear systems with adaptive filters. In particular...
This paper provides a novel normalized sign least-mean square (NSLMS) algorithm which updates only a...
In this paper we discuss a proportional weight algo-rithm that is similar to LMS. The distinction is...
The LMS adaptive algorithm has always been attractive to researchers in the field of adaptive signal...
The Normalized Least Mean Square (NLMS) algorithm is an important variant of the classical LMS algor...
Abstract Least mean square (LMS) based adaptive algorithms have been attracted much attention since ...
Shows that the NLMS (normalized least-mean-square) algorithm is a potentially faster converging algo...
The paper deals with the identification of nonlinear systems with adaptive filters. In particular, a...
The paper deals with the identification of nonlinear systems with adaptive filters. In particular, a...
Adaptive filters that self-adjust their transfer functions according to optimizing algorithms are po...
Partial updating of LMS filter coefficients is an effective method for reducing the computational lo...
This paper presents a novel adaptive algorithm based on RZA-LMS for sparse signal and system identif...
The paper deals with the identification of nonlinear systems with adaptive filters. In particular, a...
Adaptive filters that self-adjust their transfer functions according to optimizing algorithms are po...
Abstract—This paper presents a precise analysis of the crit-ical path of the least-mean-square (LMS)...
5siThe paper deals with the identification of nonlinear systems with adaptive filters. In particular...