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Distributed Estimation Over an Adaptive Diffusion Network Based on the Family of Affine Projection Algorithms

机译:基于仿射投影算法族的自适应扩散网络分布式估计

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This paper utilizes the family of Aline projection algorithms (APAs) for distributed estimation in the adaptive diffusion networks. The diffusion APA (DAPA), the diffusion selective partial update (SPU) APA (DSPU-APA), the diffusion selective regressor (SR) APA (DSR-APA), and the diffusion dynamic selection (DS) APA (DDS-APA) are introduced in a unified way. In DSPU-APA, the weight coefficients are partially updated at each node during the adaptation. Therefore, the DSPU-APA has lower computational complexity in comparison to the DAPA. In addition, the convergence speed of the DSPU-APA is close to the DAPA. In DSR-APA, a subset of input regressors is optimally selected at each node during the adaptation. The dynamic selection of input regressors is performed in the DDS-APA. These strategies improve the performance of the conventional DAPA in terms of the steady-state error and computational complexity features. Also, by combining these algorithms, the DSPU-SR-APA and the DSPU-DS-APA are established, which are computationally efficient. The mean-square performance of the proposed algorithms is analyzed in the nonstationary environment and the generic relations for the theoretical learning curve and the steady-state error are derived. The analysis is based on the spatial-temporal energy conservation relation. The validity of the theoretical results and the good performance of the introduced algorithms are demonstrated by several computer simulations in diffusion networks.
机译:本文利用Aline投影算法(APA)系列在自适应扩散网络中进行分布式估计。扩散APA(DAPA),扩散选择性部分更新(SPU)APA(DSPU-APA),扩散选择性回归(SR)APA(DSR-APA)和扩散动态选择(DS)APA(DDS-APA)以统一的方式介绍。在DSPU-APA中,权重系数在自适应期间在每个节点上部分更新。因此,与DAPA相比,DSPU-APA具有较低的计算复杂度。另外,DSPU-APA的收敛速度接近DAPA。在DSR-APA中,在自适应过程中,在每个节点上最优选择输入回归子的子集。输入回归变量的动态选择在DDS-APA中执行。这些策略在稳态误差和计算复杂度方面提高了常规DAPA的性能。而且,通过组合这些算法,建立了DSPU-SR-APA和DSPU-DS-APA,它们在计算上是有效的。分析了该算法在非平稳环境下的均方性能,推导了理论学习曲线与稳态误差的一般关系。该分析基于时空能量守恒关系。扩散网络中的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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