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Diffusion LMS Strategies for Distributed Estimation

机译:分布估计的扩散LMS策略

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摘要

We consider the problem of distributed estimation, where a set of nodes is required to collectively estimate some parameter of interest from noisy measurements. The problem is useful in several contexts including wireless and sensor networks, where scalability, robustness, and low power consumption are desirable features. Diffusion cooperation schemes have been shown to provide good performance, robustness to node and link failure, and are amenable to distributed implementations. In this work we focus on diffusion-based adaptive solutions of the LMS type. We motivate and propose new versions of the diffusion LMS algorithm that outperform previous solutions. We provide performance and convergence analysis of the proposed algorithms, together with simulation results comparing with existing techniques. We also discuss optimization schemes to design the diffusion LMS weights.
机译:我们考虑分布式估计的问题,其中需要一组节点来从噪声测量中共同估计一些感兴趣的参数。该问题在包括无线和传感器网络在内的多种环境中很有用,其中可伸缩性,鲁棒性和低功耗是理想的功能。扩散合作方案已显示出可提供良好的性能,节点和链接故障的鲁棒性,并且适合于分布式实现。在这项工作中,我们专注于基于扩散的LMS类型的自适应解决方案。我们激励并提出优于以前解决方案的扩散LMS算法的新版本。我们提供了所提出算法的性能和收敛性分析,以及与现有技术进行比较的仿真结果。我们还将讨论用于设计扩散LMS权重的优化方案。

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