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Novel Sparse Algorithms based on Lyapunov Stability for Adaptive System Identification

机译:基于Lyapunov稳定性的稀疏自适应系统辨识新算法。

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摘要

Adaptive filters are extensively used in the identification of an unknown system. Unlike several gradient-search based adaptive filtering techniques, the Lyapunov Theory-based Adaptive Filter offers improved convergence and stability. When the system is described by a sparse model, the performance of Lyapunov Adaptive (LA) filter is degraded since it fails to exploit the system sparsity. In this paper, the Zero-Attracting Lyapunov Adaptation algorithm (ZA-LA), the Reweighted Zero-Attracting Lyapunov Adaptation algorithm (RZA-LA) and an affine combination scheme of the LA and proposed ZA-LA filters are proposed. The ZA-LA algorithm is based on ?1-norm relaxation while the RZA-LA algorithm uses a log-sum penalty to accelerate convergence when identifying sparse systems. It is shown by simulations that the proposed algorithms can achieve better convergence than the existing LMS/LA filter for a sparse system, while the affine combination scheme is robust in identifying systems with variable sparsity.
机译:自适应滤波器广泛用于识别未知系统。与几种基于梯度搜索的自适应滤波技术不同,基于李雅普诺夫理论的自适应滤波器可提供更高的收敛性和稳定性。当用稀疏模型描述系统时,Lyapunov自适应(LA)滤波器的性能会降低,因为它无法利用系统稀疏性。提出了零吸引李雅普诺夫自适应算法(ZA-LA),加权加权零吸引李雅普诺夫自适应算法(RZA-LA)以及LA与拟议的ZA-LA滤波器的仿射组合方案。 ZA-LA算法基于?1-范数松弛,而RZA-LA算法使用对数和惩罚来加速识别稀疏系统时的收敛。仿真表明,对于稀疏系统,提出的算法比现有的LMS / LA滤波器具有更好的收敛性,而仿射组合方案在识别稀疏性可变的系统方面具有鲁棒性。

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