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首页> 外文期刊>International journal of communication systems >A family of diffusion normalized subband adaptive filter algorithms over distributed networks
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A family of diffusion normalized subband adaptive filter algorithms over distributed networks

机译:分布式网络上的扩散归一化子带自适应滤波器算法族

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This paper solves the problem of distributed estimation in the diffusion networks based on the family of normalized subband adaptive filters (NSAFs). The diffusion NSAF (DNSAF), the diffusion selective partial update NSAF (DSPU-NSAF), the diffusion fix selection NSAF (DFS-NSAF), and the diffusion dynamic selection NSAF (DDS-NSAF) are established based on the general formalism. In DSPU-NSAF, the weight coefficients are partially updated rather than the entire weights at each node during the adaptation. The DFS-NSAF selects a subset of subbands and uses them to update the weights. The dynamic selection of subbands is performed in DDS-NSAF at each node during the weigh coefficients update. In comparison with DNSAF, the DSPU-NSAF, the DFS-NSAF, and the DDS-NSAF have lower computational complexity while the convergence speed of them is close to the DNSAF. Also, by combination of SPU with FS and DS approaches, the DSPU-FS-NSAF and the DSPU-DS-NSAF are established, which are computationally efficient. In the following, based on the spatial-temporal energy conservation relation, a unified framework for mean-square performance analysis of the family of DNSAF algorithms in stationary and nonstationary environments is presented, and the theoretical expressions for learning curve and steady-state error are derived for entire network. The validity of the theoretical results and the good performance of introduced algorithms are demonstrated by several computer simulations.
机译:本文解决了基于归一化子带自适应滤波器(NSAF)系列的扩散网络中分布式估计的问题。基于一般形式,建立了扩散NSAF(DNSAF),扩散选择性部分更新NSAF(DSPU-NSAF),扩散固定选择NSAF(DFS-NSAF)和扩散动态选择NSAF(DDS-NSAF)。在DSPU-NSAF中,自适应过程中会部分更新权重系数,而不是更新每个节点的整个权重。 DFS-NSAF选择子带的子集,并使用它们来更新权重。在加权系数更新期间,在每个节点的DDS-NSAF中执行子带的动态选择。与DNSAF相比,DSPU-NSAF,DFS-NSAF和DDS-NSAF的计算复杂度较低,而它们的收敛速度却接近DNSAF。此外,通过将SPU与FS和DS方法结合使用,可以建立计算效率高的DSPU-FS-NSAF和DSPU-DS-NSAF。下面,基于时空能量守恒关系,提出了用于稳态和非稳态环境下的DNSAF算法族均方性能分析的统一框架,并给出了学习曲线和稳态误差的理论表达式。派生给整个网络。若干计算机仿真证明了理论结果的有效性和所引入算法的良好性能。

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