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Journal ArticleDOI

Sensor-Centric Data Reduction for Estimation With WSNs via Censoring and Quantization

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TLDR
A novel data reduction method which requires no inter-sensor collaboration and results in only a subset of the sensor measurements transmitted to the FC, and performs competitively with alternative methods, under different sensing conditions, while having lower computational complexity.
Abstract
Consider a wireless sensor network (WSN) with a fusion center (FC) deployed to estimate signal parameters from noisy sensor measurements. If the WSN has a large number of low-cost, battery-operated sensor nodes with limited transmission bandwidth, then conservation of transmission resources (power and bandwidth) is paramount. To this end, the present paper develops a novel data reduction method which requires no inter-sensor collaboration and results in only a subset of the sensor measurements transmitted to the FC. Using interval censoring as a data-reduction method, each sensor decides separately whether to censor its acquired measurements based on a rule that promotes censoring of measurements with least impact on the estimator mean-square error (MSE). Leveraging the statistical distribution of sensor data, the censoring mechanism and the received uncensored data, FC-based estimators are derived for both deterministic (via maximum likelihood estimation) and random parameters (via maximum a posteriori probability estimation) for a linear-Gaussian model. Quantization of the uncensored measurements at the sensor nodes offers an additional degree of freedom in the resource conservation versus estimator MSE reduction tradeoff. Cramer-Rao bound analysis for the different censor-estimators and censor-quantizer estimators is also provided to benchmark and facilitate MSE-based performance comparisons. Numerical simulations corroborate the analytical findings and demonstrate that the proposed censoring-estimation approach performs competitively with alternative methods, under different sensing conditions, while having lower computational complexity.

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Citations
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Quantized Subgradient Algorithm and Data-Rate Analysis for Distributed Optimization

TL;DR: A distributed quantized subgradient algorithm is presented with quantized information exchange between agents and the optimal solution can be obtained without any quantization errors based on a proposed encoder-decoder scheme and a zooming-in technique.
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Quality of Information in Mobile Crowdsensing: Survey and Research Challenges

TL;DR: In this paper, the authors provide a new framework for defining and enforcing the Quality of Information (QoI) in mobile crowdsensing and analyze in depth the current state of the art on the topic.
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Distributed Clock Skew and Offset Estimation in Wireless Sensor Networks: Asynchronous Algorithm and Convergence Analysis

TL;DR: In this paper, the authors proposed a fully distributed algorithm for joint clock skew and offset estimation in wireless sensor networks based on belief propagation, which does not require any centralized information processing or coordination, and is scalable with network size.
Journal ArticleDOI

Online Censoring for Large-Scale Regressions with Application to Streaming Big Data

TL;DR: This work introduces means of identifying and omitting less informative observations in an online and data-adaptive fashion and joint censoring and estimation is put forth to solve large-scale linear regressions in a centralized setup.
Proceedings ArticleDOI

Topic-aware social sensing with arbitrary source dependency graphs

TL;DR: The first social sensing framework that explicitly incorporates the topic relevance feature of claims and arbitrary source dependency graphs into the solutions of truth discovery problem is presented, which solves a multidimensional maximum likelihood estimation problem to jointly estimate the truthfulness and topic relevance of claims as well as the reliability and topic awareness of sources.
References
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Wireless sensor networks for habitat monitoring

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TL;DR: The Bayesian approach to regularization and model-comparison is demonstrated by studying the inference problem of interpolating noisy data by examining the posterior probability distribution of regularizing constants and noise levels.
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