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A family of gain-combined proportionate adaptive filtering algorithms for sparse system identification

机译:用于稀疏系统识别的一个增益组合成比例的自适应滤波算法

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Abstract The classical proportionate adaptive filtering (PAF) algorithms achieve a fast initial convergence for sparse impulse response. But the small coefficients receive very little gain so that the time needed to reach steady-state misalignment is increased. In addition, the PAF algorithms converge much slower than the original adaptive filtering (OAF) algorithms when the impulse response is dispersive. In order to address these problems, this paper proposes a family of gain-combined PAF (GC-PAF) algorithms. The gain-combined matrix of the proposed GC-PAF algorithms is implemented by using a sigmoidal activation function to adaptively combine the proportionate matrix and identity matrix, which can retain the advantages of both the PAF algorithms in the context of sparse impulse response and the OAF algorithms in the context of dispersive impulse response. Meanwhile, to be also applicable to the family of sign algorithms against impulsive noise, a general framework for the update of the sigmoidal activation function is obtained by using the gradient descent method to minimize the L 1 -norm of the system output error. Simulations in the contexts of three different sparsity impulse responses have shown that the proposed GC-PAF algorithms perform much better than the OAF, PAF and improved PAF (IPAF) algorithms. ]]>
机译:<![cdata [ Abstract 经典按比例自适应滤波(PAF)算法实现稀疏脉冲响应的快速初始收敛。但是小系数接收很少的收益,以便增加稳态错位所需的时间。此外,当脉冲响应分散时,PAF算法与原始自适应滤波(OAF)算法收敛得多。为了解决这些问题,本文提出了一系列增益组合PAF(GC-PAF)算法。所提出的GC-PAF算法的增益组合矩阵是通过使用S形激活函数来实现的,以便于自适应地组合比例矩阵和标识矩阵,这可以在稀疏脉冲响应和OAF的上下文中保留PAF算法的优点分散脉冲响应背景下的算法。同时,还适用于符号算法对抗冲动噪声,通过使用梯度下降方法来获得更新S形激活功能的一般框架,以最小化 l 1 - 系统输出的NORM错误。在三种不同的稀疏性脉冲响应的上下文中的模拟表明,所提出的GC-PAF算法比OAF,PAF和改进的PAF(IPAF)算法更好。 ]]>

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