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Open AccessJournal ArticleDOI

Linear Coherent Estimation With Spatial Collaboration

Swarnendu Kar, +1 more
- 01 Jun 2013 - 
- Vol. 59, Iss: 6, pp 3532-3553
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TLDR
A power-constrained sensor network that consists of multiple sensor nodes and a fusion center (FC) is considered, where the goal is to estimate a random parameter of interest.
Abstract
A power-constrained sensor network that consists of multiple sensor nodes and a fusion center (FC) is considered, where the goal is to estimate a random parameter of interest. In contrast to the distributed framework, the sensor nodes may be partially connected, where individual nodes can update their observations by (linearly) combining observations from other adjacent nodes. The updated observations are communicated to the FC by transmitting through a coherent multiple access channel. The optimal collaborative strategy is obtained by minimizing the expected mean-square error subject to power constraints at the sensor nodes. Each sensor can utilize its available power for both collaboration with other nodes and transmission to the FC. Two kinds of constraints, namely the cumulative and individual power constraints, are considered. The effects due to imperfect information about observation and channel gains are also investigated. The resulting performance improvement is illustrated analytically through the example of a homogeneous network with equicorrelated parameters. Assuming random geometric graph topology for collaboration, numerical results demonstrate a significant reduction in distortion even for a moderately connected network, particularly in the low local signal-to-noise ratio regime.

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Citations
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Journal ArticleDOI

Sparsity-Aware Sensor Collaboration for Linear Coherent Estimation

TL;DR: A unified framework to jointly design the optimal sensor selection and collaboration schemes subject to a certain information or energy constraint is introduced and it is empirically show that there exists a trade-off between sensors selection and sensor collaboration.
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Optimal Power Allocation for Parameter Tracking in a Distributed Amplify-and-Forward Sensor Network

TL;DR: The results of several simulations are presented to show that the use of optimal power control provides a significant reduction in either MSE or transmit power compared with a non-optimized approach.
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Distributed Two-Step Quantized Fusion Rules Via Consensus Algorithm for Distributed Detection in Wireless Sensor Networks

TL;DR: Simulations show that the proposed quantized two-step distributed detection algorithm approaches the performance of the unquantized centralized (with a fusion center) detector and its power consumption is shown to be 50% less than the existing (unquantized) conventional algorithm.
Journal ArticleDOI

Wireless Power Transfer for Distributed Estimation in Sensor Networks

TL;DR: This paper studies power allocation for distributed estimation of an unknown scalar random source in sensor networks with a multiple-antenna fusion center (FC), where wireless sensors are equipped with radio-frequency-based energy harvesting technology.
Posted Content

Linear Coherent Estimation with Spatial Collaboration

TL;DR: Collaboration among neighbors significantly improves power efficiency of the network in the low local-SNR regime, as demonstrated through an insightful example and numerical simulations.
References
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Journal ArticleDOI

A survey on sensor networks

TL;DR: The current state of the art of sensor networks is captured in this article, where solutions are discussed under their related protocol stack layer sections.
Journal ArticleDOI

Using SeDuMi 1.02, a MATLAB toolbox for optimization over symmetric cones

TL;DR: This paper describes how to work with SeDuMi, an add-on for MATLAB, which lets you solve optimization problems with linear, quadratic and semidefiniteness constraints by exploiting sparsity.
Journal ArticleDOI

Semidefinite programming

TL;DR: A survey of the theory and applications of semidefinite programs and an introduction to primaldual interior-point methods for their solution are given.
Journal ArticleDOI

Analysis of the increase and decrease algorithms for congestion avoidance in computer networks

TL;DR: It is shown that a simple additive increase and multiplicative decrease algorithm satisfies the sufficient conditions for con- vergence to an efficient and fair state regardless of the starting state of the network.
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