This paper proposes a new approach to identify time varying sparse systems. The proposed approach uses Zero-Attracting Least Mean Square (ZA-LMS) algorithm with an adaptive optimal zero attractor controller which can adapt dynamically to the sparseness level and provide appreciable performance in all environments ranging from sparse to nonsparse conditions. The optimal zero attractor controller is derived based on the criterion that confirms largest decrease in mean square deviation (MSD) error. A simple update rule is also proposed to change the zero attractor controller based on the level of sparsity. It is found that, for nonsparse system, the proposed approach converges to LMS (as ZA-LMS cannot outperform LMS when the system is nonspars...
The $l_1$-norm sparsity constraint is a widely used technique for constructing sparse models. In thi...
Sparse systems are those systems, the impulse response of which contains a signi_cant number of zero...
Standard least mean square/fourth (LMS/F) is a classical adaptive algorithm that combined the advant...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
The zero attraction affine projection algorithm (ZA-APA) achieves better performance in terms of con...
This paper presents a novel adaptive algorithm based on RZA-LMS for sparse signal and system identif...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
Adaptive filters are extensively used in the identification of an unknown system. Unlike several gra...
Abstract—In this paper, a novel weighted zero-attracting leaky-LMS (WZA-LLMS) adaptive algorithm for...
International audienceZero-attracting least-mean-square (ZA-LMS) algorithm has been widely used for ...
For the sparse system estimation problem, the l0 norm constraint normalized least mean square (l0-NL...
International audienceZero-attracting least-mean-square (ZA-LMS) algorithm has been widely used for ...
In this thesis, low-complexity adaptive filtering algorithms that exploit the sparsity of signals an...
A general zero attraction (GZA) proportionate normalized maximum correntropy criterion (GZA-PNMCC) a...
In this thesis, low-complexity adaptive filtering algorithms that exploit the sparsity of signals an...
The $l_1$-norm sparsity constraint is a widely used technique for constructing sparse models. In thi...
Sparse systems are those systems, the impulse response of which contains a signi_cant number of zero...
Standard least mean square/fourth (LMS/F) is a classical adaptive algorithm that combined the advant...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
The zero attraction affine projection algorithm (ZA-APA) achieves better performance in terms of con...
This paper presents a novel adaptive algorithm based on RZA-LMS for sparse signal and system identif...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
Adaptive filters are extensively used in the identification of an unknown system. Unlike several gra...
Abstract—In this paper, a novel weighted zero-attracting leaky-LMS (WZA-LLMS) adaptive algorithm for...
International audienceZero-attracting least-mean-square (ZA-LMS) algorithm has been widely used for ...
For the sparse system estimation problem, the l0 norm constraint normalized least mean square (l0-NL...
International audienceZero-attracting least-mean-square (ZA-LMS) algorithm has been widely used for ...
In this thesis, low-complexity adaptive filtering algorithms that exploit the sparsity of signals an...
A general zero attraction (GZA) proportionate normalized maximum correntropy criterion (GZA-PNMCC) a...
In this thesis, low-complexity adaptive filtering algorithms that exploit the sparsity of signals an...
The $l_1$-norm sparsity constraint is a widely used technique for constructing sparse models. In thi...
Sparse systems are those systems, the impulse response of which contains a signi_cant number of zero...
Standard least mean square/fourth (LMS/F) is a classical adaptive algorithm that combined the advant...