Skip to main content

Dynamic Topology Adaptation Based on Adaptive Link Selection Algorithms for Distributed Estimation

Author(s): Xu, S; Lamare, RC de; Poor, H. Vincent

Download
To refer to this page use: http://arks.princeton.edu/ark:/88435/pr1wh2df2w
Abstract: This paper presents adaptive link selection algorithms for distributed estimation and considers their application to wireless sensor networks and smart grids. In particular, exhaustive search--based least--mean--squares(LMS)/recursive least squares(RLS) link selection algorithms and sparsity--inspired LMS/RLS link selection algorithms that can exploit the topology of networks with poor--quality links are considered. The proposed link selection algorithms are then analyzed in terms of their stability, steady--state and tracking performance, and computational complexity. In comparison with existing centralized or distributed estimation strategies, key features of the proposed algorithms are: 1) more accurate estimates and faster convergence speed can be obtained; and 2) the network is equipped with the ability of link selection that can circumvent link failures and improve the estimation performance. The performance of the proposed algorithms for distributed estimation is illustrated via simulations in applications of wireless sensor networks and smart grids.
Publication Date: 18-Oct-2015
Citation: Xu, S, Lamare, RC de, Poor, HV. (2015). Dynamic Topology Adaptation Based on Adaptive Link Selection Algorithms for Distributed Estimation
Type of Material: Journal Article
Version: Author's manuscript



Items in OAR@Princeton are protected by copyright, with all rights reserved, unless otherwise indicated.