Distributed Consensus Gossip-Based Data Fusion for Suppressing Incorrect Sensor Readings in Wireless Sensor Networks

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Publicado en:Journal of Low Power Electronics and Applications vol. 15, no. 1 (2025), p. 6
Autor principal: Kenyeres, Martin
Otros Autores: Kenyeres, Jozef, Sepideh Hassankhani Dolatabadi
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MDPI AG
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Acceso en línea:Citation/Abstract
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Resumen:Incorrect sensor readings can cause serious problems in Wireless Sensor Networks (WSNs), potentially disrupting the operation of the entire system. As shown in the literature, they can arise from various reasons; therefore, addressing this issue has been a significant challenge for the scientific community over the past few decades. In this paper, we examine the applicability of seven distributed consensus gossip-based algorithms for sensor fusion (namely, the Randomized Gossip algorithm, the Geographic Gossip algorithm, three initial configurations of the Broadcast Gossip algorithm, the Push-Sum protocol, and the Push-Pull protocol) to compensate for incorrect data in WSNs. More specifically, we consider a scenario where the sensor-measured data (measured by a set of independent sensor nodes) are skewed due to Gaussian noise with a various standard deviation <inline-formula>σ</inline-formula>, resulting in discrepancies between the measured values and the true value of observed physical quantities. Subsequently, the aforementioned algorithms are employed to mitigate this skewness in order to improve the accuracy of the measured data. In this paper, WSNs are modeled as random geometric graphs with various connectivity, and the performance of the algorithms is evaluated using two metrics (specifically, the mean square error (MSE) and the number of sent messages required for an algorithm to be completed). Based on the presented results, it is identified that all the examined algorithms can significantly suppress incorrect sensor readings (MSE without sensor fusion = −0.42 dB if <inline-formula>σ</inline-formula> = 1, and MSE without sensor fusion = 14.05 dB if <inline-formula>σ</inline-formula> = 5), and the best performance is achieved by PS in dense graphs and by GG in sparse graphs (both algorithms achieve the maximum precision MSE = −24.87 dB if <inline-formula>σ</inline-formula> = 1 and MSE = −21.02 dB if <inline-formula>σ</inline-formula> = 5). Additionally, the performance of the analyzed distributed consensus gossip algorithms is compared to the best deterministic consensus algorithm applied for the same purpose.
ISSN:2079-9268
DOI:10.3390/jlpea15010006
Fuente:Advanced Technologies & Aerospace Database