Multi-hop diffusion LMS for energy-constrained distributed estimation
We propose a multi-hop diffusion strategy for a sensor network to perform distributed least mean-squares (LMS) estimation under local and network-wide energy constraints. At each iteration of the strategy, each node can combine intermediate parameter estimates from nodes other than its physical...
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Main Authors: | , |
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Format: | Article |
Language: | English |
Published: |
2016
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Subjects: | |
Online Access: | https://hdl.handle.net/10356/81325 http://hdl.handle.net/10220/39535 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | We propose a multi-hop diffusion strategy for a
sensor network to perform distributed least mean-squares (LMS)
estimation under local and network-wide energy constraints.
At each iteration of the strategy, each node can combine
intermediate parameter estimates from nodes other than its
physical neighbors via a multi-hop relay path. We propose a
rule to select combination weights for the multi-hop neighbors,
which can balance between the transient and the steady-state
network mean-square deviations (MSDs). We study two classes of
networks: simple networks with a unique transmission path from
one node to another, and arbitrary networks utilizing diffusion
consultations over at most two hops. We propose a method
to optimize each node’s information neighborhood subject to
local energy budgets and a network-wide energy budget for
each diffusion iteration. This optimization requires the network
topology, and the noise and data variance profiles of each node,
and is performed offline before the diffusion process. In addition,
we develop a fully distributed and adaptive algorithm that
approximately optimizes the information neighborhood of each
node with only local energy budget constraints in the case where
diffusion consultations are performed over at most a predefined
number of hops. Numerical results suggest that our proposed
multi-hop diffusion strategy achieves the same steady-state MSD
as the existing one-hop adapt-then-combine diffusion algorithm
but with a lower energy budget. |
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