2019
DOI: 10.1049/iet-net.2018.5072
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Positioning optimisation based on particle quality prediction in wireless sensor networks

Abstract: The particle degradation problem of particle filter (PF) algorithm caused by reduction of particle weights significantly influences the positioning accuracy of target nodes in wireless sensor networks. This study presents a predictor to obtain the particle swarm of high quality by calculating non-linear variations of ranging between particles and flags and modifying the reference distribution function. To this end, probability variations of distances between particles and star flags are calculated and the maxi… Show more

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Cited by 79 publications
(87 citation statements)
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“…Considering the real conditions, we accommodate the particle acceleration in the framework. The high-quality particle set is obtained according to the nonlinear replication algorithm [23], and the predicted particle set x i 0:t : i = 1, 2, ..., N is obtained by the PQP algorithm. The weighted centroid drift and the centroid of the predicted particle set are calculated when the centroid velocity solution is applied to the predicted particle set.…”
Section: Proposed Algorithmmentioning
confidence: 99%
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“…Considering the real conditions, we accommodate the particle acceleration in the framework. The high-quality particle set is obtained according to the nonlinear replication algorithm [23], and the predicted particle set x i 0:t : i = 1, 2, ..., N is obtained by the PQP algorithm. The weighted centroid drift and the centroid of the predicted particle set are calculated when the centroid velocity solution is applied to the predicted particle set.…”
Section: Proposed Algorithmmentioning
confidence: 99%
“…According to [23], applying the PF to the target node may significantly affect the positioning accuracy. Particles in the high-likelihood region have large weights, and those that do not intersect with the prior distribution region have weights that are approximately equal to zero.…”
Section: B Moment Equation Solutionmentioning
confidence: 99%
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“…In the literature, PFs, or sequential Monte Carlo recursive methods have been studied over the last years, in order to increase accuracy in location and positioning applications [35]. Different conditions and implementations have been considered, such as NLOS in narrow-band systems [36], positioning optimization in wireless sensor networks [37] or enhancement of positions and orientation estimations [38] . The analysis on positioning bounds [39], the use of techniques such as map re-calibration [40] and [41] or multiple data fusion [42] provide further enhancement in PF -based location.…”
Section: Positioning Using a Particle Filtermentioning
confidence: 99%