基于异构自适应网络的鲁棒分布式增量LMS参数估计

M. Farhid, M. Shamsi, M. Sedaaghi
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引用次数: 0

摘要

自适应网络包括一组具有适应和学习能力的节点,用于对现实世界中遇到的各种自组织和复杂活动进行建模。本文研究了具有理想链路的异构分布式增量LMS算法对未知参数估计质量的影响。在异构自适应网络中,根据先前计算的信噪比定义的一小部分节点被假设为收集数据并执行网络内处理的知情节点,而其余节点被假设为不知情节点,仅参与处理任务。仿真结果表明,该算法不仅在相同条件下显著提高了分布式增量LMS算法的性能,而且在某些节点观测不可靠(有噪声节点)的情况下也证明了较好的估计精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust distributed incremental LMS for parameter estimation using heterogeneous adaptive networks
Adaptive networks include a set of nodes with adaptation and learning abilities for modeling various types of self-organized and complex activities encountered in the real world. This paper presents the effect of heterogeneous distributed incremental LMS algorithm with ideal links on the quality of unknown parameter estimation. In heterogeneous adaptive networks, a fraction of the nodes, defined based on previously calculated SNR, is assumed to be the informed nodes that collect data and perform in-network processing, while the remaining nodes are assumed to be uninformed and only participate in the processing tasks. As our simulation results show, the proposed algorithm not only considerably improves the performance of the Distributed Incremental LMS algorithm in a same condition, but also proves a good accuracy of estimation in cases where some of the nodes make unreliable observations (noisy nodes).
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