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Block Least Mean Squares Algorithm over Distributed Wireless Sensor Network

机译:分布式无线传感器网络中的块最小均方算法

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摘要

In a distributed parameter estimation problem, during each sampling instant, a typical sensor node communicates its estimate either by the diffusion algorithm or by the incremental algorithm. Both these conventional distributed algorithms involve significant communication overheads and, consequently, defeat the basic purpose of wireless sensor networks. In the present paper, we therefore propose two new distributed algorithms, namely, block diffusion least mean square (BDLMS) and block incremental least mean square (BILMS) by extending the concept of block adaptive filtering techniques to the distributed adaptation scenario. The performance analysis of the proposed BDLMS and BILMS algorithms has been carried out and found to have similar performances to those offered by conventional diffusion LMS and incremental LMS algorithms, respectively. The convergence analyses of the proposed algorithms obtained from the simulation study are also found to be in agreement with the theoretical analysis. The remarkable and interesting aspect of the proposed block-based algorithms is that their communication overheads per node and latencies are less than those of the conventional algorithms by a factor as high as the block size used in the algorithms.
机译:在分布式参数估计问题中,在每个采样瞬间,典型的传感器节点通过扩散算法或增量算法传达其估计值。这两种常规的分布式算法都涉及大量的通信开销,因此破坏了无线传感器网络的基本目的。因此,在本文中,我们通过将块自适应滤波技术的概念扩展到分布式自适应场景,提出了两种新的分布式算法,即块扩散最小均方(BDLMS)和块增量最小均方(BILMS)。已对提出的BDLMS和BILMS算法进行了性能分析,发现它们分别具有与常规扩散LMS和增量LMS算法相似的性能。从仿真研究中得到的算法的收敛性分析也与理论分析相吻合。所提出的基于块的算法的显着和有趣的方面是,它们的每个节点的通信开销和等待时间比常规算法的通信开销小了与算法中使用的块大小相同的因子。

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  • 来源
    《Journal of computer networks and communications》 |2012年第1期|601287.1-601287.13|共13页
  • 作者单位

    Department of ECE, National Institute of Technology, Rourkela 769008, India;

    School of Electrical Sciences, Indian Institute of Technology, Bhubaneswar 713002, India;

    School of Electrical Sciences, Indian Institute of Technology, Bhubaneswar 713002, India;

    Institute for Digital Communication, The University of Edinburgh, Edinburgh EH899AD, UK;

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